Context-detection API for Android developed as a university project
Nevar pievienot vairāk kā 25 tēmas Tēmai ir jāsākas ar burtu vai ciparu, tā var saturēt domu zīmes ('-') un var būt līdz 35 simboliem gara.

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  1. % This file was created with JabRef 2.3.1.
  2. % Encoding: UTF-8
  3. @INPROCEEDINGS{Liao2007a,
  4. author = {Lin Liao and Tanzeem Choudhury and Dieter Fox and Henry A. Kautz},
  5. title = {Training Conditional Random Fields Using Virtual Evidence Boosting},
  6. booktitle = {IJCAI},
  7. year = {2007},
  8. pages = {2530-2535},
  9. bibsource = {DBLP, http://dblp.uni-trier.de},
  10. crossref = {DBLP:conf/ijcai/2007},
  11. ee = {http://dli.iiit.ac.in/ijcai/IJCAI-2007/PDF/IJCAI07-407.pdf},
  12. file = {Liao2007a.pdf:Liao2007a.pdf:PDF},
  13. owner = {chris},
  14. timestamp = {2009.12.03}
  15. }
  16. @INPROCEEDINGS{Mahdaviani2007,
  17. author = {Maryam Mahdaviani and Tanzeem Choudhury},
  18. title = {Fast and Scalable Training of Semi-Supervised CRFs with Application
  19. to Activity Recognition},
  20. booktitle = {NIPS},
  21. year = {2007},
  22. bibsource = {DBLP, http://dblp.uni-trier.de},
  23. crossref = {DBLP:conf/nips/2007},
  24. ee = {http://books.nips.cc/papers/files/nips20/NIPS2007_0863.pdf},
  25. file = {Mahdaviani2007.pdf:Mahdaviani2007.pdf:PDF},
  26. owner = {chris},
  27. timestamp = {2009.12.03}
  28. }
  29. @MISC{Abowd1997,
  30. author = {Gregory D. Abowd and Christopher G. Atkeson and Jason Hong and Sue
  31. Long and Rob Kooper},
  32. title = {Cyberguide: A Mobile Context-Aware Tour Guide},
  33. year = {1997},
  34. citeseercitationcount = {0},
  35. citeseerurl = {http://citeseer.ist.psu.edu/36540.html},
  36. comment = {Not relevant.},
  37. file = {Abowd1997.pdf:Abowd1997.pdf:PDF;Abowd1997.pdf:Abowd1997.pdf:PDF},
  38. owner = {chris},
  39. timestamp = {2009.12.01}
  40. }
  41. @ARTICLE{Aha1991,
  42. author = {Aha, David W. and Kibler, Dennis and Albert, Marc K.},
  43. title = {Instance-Based Learning Algorithms},
  44. journal = {Machine Learning},
  45. year = {1991},
  46. volume = {6},
  47. pages = {37--66},
  48. number = {1},
  49. month = {January},
  50. abstract = {Storing and using specific instances improves the performance of several
  51. supervised learning algorithms. These include algorithms that learn
  52. decision trees, classification rules, and distributed networks. However,
  53. no investigation has analyzed algorithms that use only specific instances
  54. to solve incremental learning tasks. In this paper, we describe a
  55. framework and methodology, called instance-based learning, that generates
  56. classification predictions using only specific instances. Instance-based
  57. learning algorithms do not maintain a set of abstractions derived
  58. from specific instances. This approach extends the nearest neighbor
  59. algorithm, which has large storage requirements. We describe how
  60. storage requirements can be significantly reduced with, at most,
  61. minor sacrifices in learning rate and classification accuracy. While
  62. the storage-reducing algorithm performs well on several real-world
  63. databases, its performance degrades rapidly with the level of attribute
  64. noise in training instances. Therefore, we extended it with a significance
  65. test to distinguish noisy instances. This extended algorithm's performance
  66. degrades gracefully with increasing noise levels and compares favorably
  67. with a noise-tolerant decision tree algorithm.},
  68. address = {Hingham, MA, USA},
  69. citeulike-article-id = {1527614},
  70. citeulike-linkout-0 = {http://portal.acm.org/citation.cfm?id=104717},
  71. citeulike-linkout-1 = {http://dx.doi.org/10.1023/A:1022689900470},
  72. citeulike-linkout-2 = {http://www.springerlink.com/content/kn127378pg361187},
  73. day = {1},
  74. doi = {10.1023/A:1022689900470},
  75. file = {Aha1991.pdf:Aha1991.pdf:PDF},
  76. issn = {0885-6125},
  77. keywords = {learning},
  78. owner = {chris},
  79. posted-at = {2007-08-01 14:37:32},
  80. priority = {4},
  81. publisher = {Kluwer Academic Publishers},
  82. timestamp = {2009.12.06},
  83. url = {http://dx.doi.org/10.1023/A:1022689900470}
  84. }
  85. @ARTICLE{Bannach2008,
  86. author = {Bannach, D. and Lukowicz, P. and Amft, O.},
  87. title = {Rapid Prototyping of Activity Recognition Applications},
  88. journal = IEEE_M_PVC,
  89. year = {2008},
  90. volume = {7},
  91. pages = {22--31},
  92. number = {2},
  93. month = {April--June },
  94. comment = {The concept of the CRN Toolbox stems from the observation that most
  95. activity recognition systems rely on a relatively small set of algorithms.
  96. These include sliding-window signal partitioning, standard time and
  97. frequency domain features, classifiers, and time series or event-based
  98. modeling algorithms.},
  99. doi = {10.1109/MPRV.2008.36},
  100. file = {Bannach2008.pdf:Bannach2008.pdf:PDF;Bannach2008.pdf:Bannach2008.pdf:PDF},
  101. owner = {chris},
  102. timestamp = {2009.12.01}
  103. }
  104. @ARTICLE{Bao2004,
  105. author = {Bao, L. and Intille, S. S.},
  106. title = {Activity Recognition from User-Annotated Acceleration Data},
  107. journal = {Pervasive Computing},
  108. year = {2004},
  109. volume = {3001},
  110. pages = {1--17},
  111. abstract = {In this work, algorithms are developed and evaluated to detect physical
  112. activities from data acquired using five small biaxial accelerometers
  113. worn simultaneously on different parts of the body. Acceleration
  114. data was collected from 20 subjects without researcher supervision
  115. or observation. Subjects were asked to perform a sequence of everyday
  116. tasks but not told specifically where or how to do them. Mean, energy,
  117. frequency-domain entropy, and correlation of acceleration data was
  118. calculated and several classifiers using these features were tested.
  119. Decision tree classifiers showed the best performance recognizing
  120. everyday activities with an overall accuracy rate of 84\%. The results
  121. show that although some activities are recognized well with subject-independent
  122. training data, others appear to require subject-specific training
  123. data. The results suggest that multiple accelerometers aid in recognition
  124. because conjunctions in acceleration feature values can effectively
  125. discriminate many activities. With just two biaxial accelerometers
  126. – thigh and wrist – the recognition performance dropped only slightly.
  127. This is the first work to investigate performance of recognition
  128. algorithms with multiple, wire-free accelerometers on 20 activities
  129. using datasets annotated by the subjects themselves.},
  130. citeulike-article-id = {1188357},
  131. citeulike-linkout-0 = {http://www.springerlink.com/content/9aqflyk4f47khyjd},
  132. comment = {Multiple accelerometers in different locations. Decision-tree classifiers.
  133. Some activities are subject-specific.
  134. For instance, laboratory acceleration data of walking displays distinct
  135. phases of a consistent gait cycle which can aide recognition of pace
  136. and incline [2]. However, acceleration data from the same subject
  137. outside of the laboratory may display marked fluctuation in the relation
  138. of gait phases and total gait length due to decreased self-awareness
  139. and fluctuations in traffic.},
  140. file = {Bao2004.pdf:Bao2004.pdf:PDF},
  141. keywords = {acceleration},
  142. owner = {chris},
  143. posted-at = {2008-04-16 11:42:22},
  144. priority = {4},
  145. timestamp = {2009.12.06},
  146. url = {http://www.springerlink.com/content/9aqflyk4f47khyjd}
  147. }
  148. @INCOLLECTION{Bardram2005,
  149. author = {Bardram, Jakob E.},
  150. title = {The Java Context Awareness Framework (JCAF) - A Service Infrastructure
  151. and Programming Framework for Context-Aware Applications},
  152. booktitle = {Pervasive Computing},
  153. publisher = {IEEE},
  154. year = {2005},
  155. pages = {98--115},
  156. abstract = {Context-awareness is a key concept in ubiquitous computing. But to
  157. avoid developing dedicated context-awareness sub-systems for specific
  158. application areas there is a need for more generic programming frameworks.
  159. Such frameworks can help the programmer develop and deploy context-aware
  160. applications faster. This paper describes the Java Context-Awareness
  161. Framework – JCAF, which is a Java-based context-awareness infrastructure
  162. and programming API for creating context-aware computer applications.
  163. The paper presents the design goals of JCAF, its runtime architecture,
  164. and its programming model. The paper presents some applications of
  165. using JCAF in three different applications and discusses lessons
  166. learned from using JCAF.},
  167. citeulike-article-id = {1145979},
  168. citeulike-linkout-0 = {http://dx.doi.org/10.1007/11428572_7},
  169. citeulike-linkout-1 = {http://www.springerlink.com/content/yl2fen8clqqwq2tb},
  170. doi = {10.1007/11428572_7},
  171. file = {Bardram2005.pdf:Bardram2005.pdf:PDF},
  172. journal = {Pervasive Computing},
  173. keywords = {awareness, context, framework},
  174. owner = {chris},
  175. posted-at = {2007-06-26 09:54:05},
  176. priority = {4},
  177. timestamp = {2009.12.06},
  178. url = {http://dx.doi.org/10.1007/11428572_7}
  179. }
  180. @ARTICLE{Bellavista2008,
  181. author = {Bellavista, P. and Kupper, A. and Helal, S.},
  182. title = {Location-Based Services: Back to the Future},
  183. journal = IEEE_M_PVC,
  184. year = {2008},
  185. volume = {7},
  186. pages = {85--89},
  187. number = {2},
  188. month = {April--June },
  189. comment = {Android mail milestone in LBSs, LBS originated with E911 mandate.
  190. Moving LSBs from operator controlled to user controlled major factor
  191. in success, helped by open systems such as Android and Openmoko.},
  192. doi = {10.1109/MPRV.2008.34},
  193. file = {Bellavista2008.pdf:Bellavista2008.pdf:PDF},
  194. owner = {chris},
  195. timestamp = {2009.12.01}
  196. }
  197. @INPROCEEDINGS{Bellotti2008,
  198. author = {Bellotti, Victoria and Begole, Bo and Chi, Ed H. and Ducheneaut,
  199. Nicolas and Fang, Ji and Isaacs, Ellen and King, Tracy and Newman,
  200. Mark W. and Partridge, Kurt and Price, Bob and Rasmussen, Paul and
  201. Roberts, Michael and Schiano, Diane J. and Walendowski, Alan},
  202. title = {Activity-based serendipitous recommendations with the Magitti mobile
  203. leisure guide},
  204. booktitle = {CHI '08: Proceeding of the twenty-sixth annual SIGCHI conference
  205. on Human factors in computing systems},
  206. year = {2008},
  207. pages = {1157--1166},
  208. address = {New York, NY, USA},
  209. publisher = {ACM},
  210. citeulike-article-id = {2859755},
  211. citeulike-linkout-0 = {http://portal.acm.org/citation.cfm?id=1357237},
  212. citeulike-linkout-1 = {http://dx.doi.org/10.1145/1357054.1357237},
  213. doi = {10.1145/1357054.1357237},
  214. file = {Bellotti2008.pdf:Bellotti2008.pdf:PDF},
  215. isbn = {9781605580111},
  216. keywords = {ibm, iphone, triage},
  217. owner = {chris},
  218. posted-at = {2008-06-03 19:57:41},
  219. priority = {5},
  220. timestamp = {2009.12.03},
  221. url = {http://dx.doi.org/10.1145/1357054.1357237}
  222. }
  223. @INPROCEEDINGS{Caros2005,
  224. author = {Car\'os, JS. and Ch\'etelat, O. and Celka, P. and Dasen, S.},
  225. title = {Very low complexity algorithm for ambulatory activity classification},
  226. booktitle = {European Medical \& Biological Engineering Conference and IFMBE European
  227. Conference on Biomedical Engineering},
  228. year = {2005},
  229. comment = {Mechanism of walking is defined as controlled falling, where the centre
  230. of gravity oscillates over the supporting limb following an inverted
  231. pendulum movement. At the end of each pendulum movement, the strike
  232. of the heel on the floor deaccelerates the swinging phase by generating
  233. an abrupt vertical acceleration. *Discrete time index, discrete time
  234. Dirac distribution*. Double integration - walking/stairs.},
  235. file = {Caros2005.pdf:Caros2005.pdf:PDF},
  236. owner = {chris},
  237. timestamp = {2009.12.01}
  238. }
  239. @ARTICLE{Choudhury2008,
  240. author = {Choudhury, T. and Consolvo, S. and Harrison, B. and Hightower, J.
  241. and LaMarca, A. and LeGrand, L. and Rahimi, A. and Rea, A. and Bordello,
  242. G. and Hemingway, B. and Klasnja, P. and Koscher, K. and Landay,
  243. J.A. and Lester, J. and Wyatt, D. and Haehnel, D.},
  244. title = {The Mobile Sensing Platform: An Embedded Activity Recognition System},
  245. journal = IEEE_M_PVC,
  246. year = {2008},
  247. volume = {7},
  248. pages = {32--41},
  249. number = {2},
  250. month = {April--June },
  251. comment = {Requirements, general architecture, privacy - audio. Structured prediction
  252. - temporal/structure & activity/context dependencies. Difficulties
  253. with training (labelling large amount of data); semi-supervised training},
  254. doi = {10.1109/MPRV.2008.39},
  255. file = {Choudhury2008.pdf:Choudhury2008.pdf:PDF},
  256. owner = {chris},
  257. timestamp = {2009.12.01}
  258. }
  259. @INPROCEEDINGS{Consolvo2008,
  260. author = {Consolvo, Sunny and Mcdonald, David W. and Toscos, Tammy and Chen,
  261. Mike Y. and Froehlich, Jon and Harrison, Beverly and Klasnja, Predrag
  262. and Lamarca, Anthony and Legrand, Louis and Libby, Ryan and Smith,
  263. Ian and Landay, James A.},
  264. title = {Activity sensing in the wild: a field trial of ubifit garden},
  265. booktitle = {CHI '08: Proceeding of the twenty-sixth annual SIGCHI conference
  266. on Human factors in computing systems},
  267. year = {2008},
  268. pages = {1797--1806},
  269. address = {New York, NY, USA},
  270. publisher = {ACM},
  271. citeulike-article-id = {2977124},
  272. citeulike-linkout-0 = {http://portal.acm.org/citation.cfm?id=1357054.1357335},
  273. citeulike-linkout-1 = {http://dx.doi.org/10.1145/1357054.1357335},
  274. doi = {10.1145/1357054.1357335},
  275. file = {Consolvo2008.pdf:Consolvo2008.pdf:PDF},
  276. isbn = {9781605580111},
  277. keywords = {sensing, ubiquitous},
  278. location = {Florence, Italy},
  279. owner = {chris},
  280. posted-at = {2008-08-25 01:26:32},
  281. priority = {2},
  282. timestamp = {2009.12.06},
  283. url = {http://dx.doi.org/10.1145/1357054.1357335}
  284. }
  285. @ARTICLE{Davies2008,
  286. author = {Davies, Nigel and Siewiorek, Daniel P. and Sukthankar, Rahul},
  287. title = {Activity-Based Computing},
  288. journal = IEEE_M_PVC,
  289. year = {2008},
  290. volume = {7},
  291. pages = {20--21},
  292. number = {2},
  293. comment = {General intro and basic history},
  294. doi = {10.1109/MPRV.2008.26},
  295. file = {Davies2008.pdf:Davies2008.pdf:PDF;Davies2008.pdf:Davies2008.pdf:PDF},
  296. issn = {1536-1268},
  297. keywords = {activity recognition, activity-based computing, context-aware computing},
  298. owner = {chris},
  299. timestamp = {2009.11.30}
  300. }
  301. @ARTICLE{Serugendo2008,
  302. author = {Di Marzo Serugendo, G.},
  303. title = {Activity-Based Computing},
  304. journal = IEEE_M_PVC,
  305. year = {2008},
  306. volume = {7},
  307. pages = {58--61},
  308. number = {2},
  309. month = {April--June },
  310. comment = {Not relevant.},
  311. doi = {10.1109/MPRV.2008.25},
  312. file = {Serugendo2008.pdf:Serugendo2008.pdf:PDF},
  313. owner = {chris},
  314. timestamp = {2009.12.01}
  315. }
  316. @INPROCEEDINGS{Dornbush2005,
  317. author = {Dornbush, S. and Fisher, K. and McKay, K. and Prikhodko, A. and Segall,
  318. Z.},
  319. title = {XPOD - A Human Activity and Emotion Aware Mobile Music Player},
  320. booktitle = {Proc. 2nd International Conference on Mobile Technology, Applications
  321. and Systems},
  322. year = {2005},
  323. pages = {1--6},
  324. comment = {We used classifiers from the open source Weka library[Witten and Frank,
  325. 2005] and neural networks from the open source Joone library[Marrone
  326. and Team, 2006]. Decision Tree (J48) [Quinlan, 1993] 41% acc. AdaBoost
  327. [Freund and Schapire, 1996] 46% acc. Support Vector Machine (SVM)
  328. [Platt, 1998; Keerthi et al 2001] 43%. K-Nearest Neighbours [Aha
  329. and Kibler, 1991] 47% acc. Neural networks 43% acc.},
  330. doi = {10.1109/MTAS.2005.207159},
  331. file = {Dornbush2005.pdf:Dornbush2005.pdf:PDF},
  332. keywords = {audio equipment, humanities, mobile handsets, XPod, emotion aware
  333. mobile music player, human activity, mobile MP3 player, mobile devices,
  334. mobile phone user experience},
  335. owner = {chris},
  336. timestamp = {2009.12.01}
  337. }
  338. @MISC{Eagle2004,
  339. author = {Eagle, N. and Pentland, A.},
  340. title = {Mobile Matchmaking: Proximity Sensing and Cueing},
  341. year = {2004},
  342. comment = {Bluetooth battery life; relationship type based on time of day and
  343. bluetooth density; Gaussian mixture model 90%, SVM better?},
  344. file = {Eagle2004.pdf:Eagle2004.pdf:PDF},
  345. journal = {IEEE Pervasive, Special Issue on Smart Phones},
  346. owner = {chris},
  347. timestamp = {2009.12.01}
  348. }
  349. @ARTICLE{Eagle2006,
  350. author = {Eagle, Nathan and Sandy Pentland, Alex},
  351. title = {Reality mining: sensing complex social systems},
  352. journal = {Personal and Ubiquitous Computing},
  353. year = {2006},
  354. volume = {10},
  355. pages = {255--268},
  356. number = {4},
  357. month = {May},
  358. abstract = {Abstract\ \ We introduce a system for sensing complex social
  359. systems with data collected from 100 mobile phones over the course
  360. of 9\ months. We demonstrate the ability to use standard Bluetooth-enabled
  361. mobile telephones to measure information access and use in different
  362. contexts, recognize social patterns in daily user activity, infer
  363. relationships, identify socially significant locations, and model
  364. organizational rhythms.},
  365. address = {London, UK},
  366. citeulike-article-id = {899208},
  367. citeulike-linkout-0 = {http://portal.acm.org/citation.cfm?id=1122739.1122745},
  368. citeulike-linkout-1 = {http://dx.doi.org/10.1007/s00779-005-0046-3},
  369. citeulike-linkout-2 = {http://www.springerlink.com/content/l562745318077t54},
  370. day = {1},
  371. doi = {10.1007/s00779-005-0046-3},
  372. file = {Eagle2006.pdf:Eagle2006.pdf:PDF},
  373. issn = {1617-4909},
  374. keywords = {complex, mining, reality, sensing, social, systems},
  375. owner = {chris},
  376. posted-at = {2009-10-12 11:59:33},
  377. priority = {2},
  378. publisher = {Springer-Verlag},
  379. timestamp = {2009.12.06},
  380. url = {http://dx.doi.org/10.1007/s00779-005-0046-3}
  381. }
  382. @MISC{Floreen2008,
  383. author = {Patrik Floréen and Joonas Kukkonen and Eemil Lagerspetz and Petteri
  384. Nurmi and Jukka Suomela},
  385. title = {BeTelGeuse: Tool for Context Data Gathering via Bluetooth},
  386. year = {2008},
  387. comment = {Not relevant.},
  388. file = {Floreen2008.pdf:Floreen2008.pdf:PDF},
  389. owner = {chris},
  390. timestamp = {2009.12.01}
  391. }
  392. @MASTERSTHESIS{Garakani2009,
  393. author = {AB Garakani},
  394. title = {Real-Time Classification of Everyday Fitness Activities on Windows
  395. Mobile},
  396. school = {University of Washington},
  397. year = {2009},
  398. comment = {Instant/smooth classification ideas. Discrete fourier transform on
  399. accelerometer data. 24 features per axis. Naive bayes model. 25Hz
  400. accelerometer sampling battery life - 7 days down to 24 hours.},
  401. file = {Garakani2009.pdf:Garakani2009.pdf:PDF},
  402. owner = {chris},
  403. timestamp = {2009.12.01}
  404. }
  405. @INBOOK{Han2006,
  406. chapter = {6},
  407. pages = {348-350},
  408. title = {Data mining: concepts and techniques},
  409. publisher = {Morgan Kaufmann},
  410. year = {2006},
  411. author = {Han, J and Kamber, M},
  412. owner = {chris},
  413. timestamp = {2010.01.14}
  414. }
  415. @MISC{Hein2008,
  416. author = {Albert Hein and Thomas Kirste},
  417. title = {Towards Recognizing Abstract Activities: An Unsupervised Approach},
  418. year = {2008},
  419. = {http://www.scientificcommons.org/48837277},
  420. abstract = {Abstract. The recognition of abstract high-level activities using
  421. wearable sensors is an important prerequisite for context aware mobile
  422. assistance, especially in AAL and medical care applications. A major
  423. difficulty in detecting this type of activities is that different
  424. activities often share similar motion patterns. One possible solution
  425. is to aggregate these activities from shorter, easier to detect base
  426. level actions, but the explicit annotation of these is not trivial
  427. and very time consuming. In this paper we introduce a simple clustering
  428. based method for the recognition of compound activities at a high
  429. level of abstraction using k-Means as an unsupervised learning algorithm.
  430. A general problem of these methods is that the resulting cluster
  431. affiliations are typically not human readable and some kind of interpretation
  432. is needed. To achieve this, we developed a hybrid approach using
  433. a generative probabilistic model built on top of the clusterer. We
  434. adapted a Hidden Markov Model for mapping the cluster memberships
  435. onto high-level activities and sucessfully evaluated the feasibility
  436. of this technique using experimental data from two test runs of a
  437. home care scenario showing a higher accuracy and robustness than
  438. conventional discriminative methods.},
  439. comment = {Unsupervised learning for basic actions, then overlying hiden markov
  440. model to classify into higher-level activities. K-means clustering
  441. algorithm for identification and detection of base-level motion patterns.},
  442. file = {Hein2008.pdf:Hein2008.pdf:PDF},
  443. institution = {CiteSeerX - Scientific Literature Digital Library and Search Engine
  444. [http://citeseerx.ist.psu.edu/oai2] (United States)},
  445. keywords = {High-Level Activities, Clustering, Probabilistic Models, AAL},
  446. owner = {chris},
  447. timestamp = {2009.12.01},
  448. url = {http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.142.6671}
  449. }
  450. @INPROCEEDINGS{Hightower2005,
  451. author = {Hightower, Jeffrey and Consolvo, Sunny and Lamarca, Anthony and Smith,
  452. Ian and Hughes, Jeff},
  453. title = {Learning and Recognizing the Places We Go},
  454. booktitle = {UbiComp 2005: Ubiquitous Computing},
  455. year = {2005},
  456. pages = {159--176},
  457. abstract = {Location-enhanced mobile devices are becoming common, but applications
  458. built for these devices find themselves suffering a mismatch between
  459. the latitude and longitude that location sensors provide and the
  460. colloquial place label that applications need. Conveying my location
  461. to my spouse, for example as (48.13641N, 11.57471E), is less informative
  462. than saying "at home". We introduce an algorithm called BeaconPrint
  463. that uses WiFi and GSM radio fingerprints collected by someone's
  464. personal mobile device to automatically learn the places they go
  465. and then detect when they return to those places. BeaconPrint does
  466. not automatically assign names or semantics to places. Rather, it
  467. provides the technological foundation to support this task. We compare
  468. BeaconPrint to three existing algorithms using month-long trace logs
  469. from each of three people. Algorithmic results are supplemented with
  470. a survey study about the places people go. BeaconPrint is over 90\%
  471. accurate in learning and recognizing places. Additionally, it improves
  472. accuracy in recognizing places visited infrequently or for short
  473. durations - a category where previous approaches have fared poorly.
  474. BeaconPrint demonstrates 63\% accuracy for places someone returns
  475. to only once or visits for less than 10 minutes, increasing to 80\%
  476. accuracy for places visited twice.},
  477. citeulike-article-id = {1382076},
  478. citeulike-linkout-0 = {http://dx.doi.org/10.1007/11551201_10},
  479. comment = {K-means clustering. 9.6 minute windows. Most algorithms rely on GPS
  480. blackouts or Wifi beacons.},
  481. doi = {10.1007/11551201_10},
  482. file = {Hightower2005.pdf:Hightower2005.pdf:PDF},
  483. journal = {UbiComp 2005: Ubiquitous Computing},
  484. keywords = {learning, location, places, prediction, significant},
  485. owner = {chris},
  486. posted-at = {2009-03-24 14:34:56},
  487. priority = {0},
  488. timestamp = {2009.12.06},
  489. url = {http://dx.doi.org/10.1007/11551201_10}
  490. }
  491. @INPROCEEDINGS{Horvitz1998,
  492. author = {Horvitz, E. and Breese, J. and Heckerman, D. and Hovel, D. and Rommelse,
  493. K.},
  494. title = {The Lumiere project: Bayesian user modeling for inferring the goals
  495. and needs of software users},
  496. booktitle = {In Proceedings of the Fourteenth Conference on Uncertainty in Artificial
  497. Intelligence},
  498. year = {1998},
  499. pages = {256--265},
  500. address = {Madison, WI},
  501. month = {July},
  502. abstract = {The Lumi`ere Project centers on harnessing probability and utility
  503. to provide assistance to computer software users. We review work
  504. on Bayesian user models that can be employed to infer a user's needs
  505. by considering a user's background, actions, and queries. Several
  506. problems were tackled in Lumi`ere research, including (1) the construction
  507. of Bayesian models for reasoning about the time-varying goals of
  508. computer users from their observed actions and queries, (2) gaining
  509. access to a stream of...},
  510. citeulike-article-id = {1269522},
  511. citeulike-linkout-0 = {http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.39.8472},
  512. file = {Horvitz1998.pdf:Horvitz1998.pdf:PDF},
  513. keywords = {bayesian, computing, inference, modeling, user},
  514. owner = {chris},
  515. posted-at = {2007-05-14 23:50:35},
  516. priority = {4},
  517. timestamp = {2009.12.06},
  518. url = {http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.39.8472}
  519. }
  520. @INPROCEEDINGS{Hudson2003,
  521. author = {Hudson, Scott and Fogarty, James and Atkeson, Christopher and Avrahami,
  522. Daniel and Forlizzi, Jodi and Kiesler, Sara and Lee, Johnny and Yang,
  523. Jie},
  524. title = {Predicting human interruptibility with sensors: a Wizard of Oz feasibility
  525. study},
  526. booktitle = {CHI '03: Proceedings of the SIGCHI conference on Human factors in
  527. computing systems},
  528. year = {2003},
  529. pages = {257--264},
  530. publisher = {ACM Press},
  531. = {New York, NY, USA},
  532. citeulike-article-id = {410042},
  533. citeulike-linkout-0 = {http://portal.acm.org/citation.cfm?id=642657},
  534. citeulike-linkout-1 = {http://dx.doi.org/10.1145/642611.642657},
  535. doi = {10.1145/642611.642657},
  536. file = {Hudson2003.pdf:Hudson2003.pdf:PDF},
  537. isbn = {1581136307},
  538. keywords = {interruptibility, wizard\_of\_oz},
  539. owner = {chris},
  540. posted-at = {2005-12-04 00:50:45},
  541. priority = {0},
  542. timestamp = {2010.01.11},
  543. url = {http://dx.doi.org/10.1145/642611.642657}
  544. }
  545. @INPROCEEDINGS{Huynh2005,
  546. author = {Huynh, T\^{a}m and Schiele, Bernt},
  547. title = {Analyzing features for activity recognition},
  548. booktitle = {sOc-EUSAI '05: Proceedings of the 2005 joint conference on Smart
  549. objects and ambient intelligence},
  550. year = {2005},
  551. pages = {159--163},
  552. address = {New York, NY, USA},
  553. publisher = {ACM},
  554. abstract = {Human activity is one of the most important ingredients of context
  555. information. In wearable computing scenarios, activities such as
  556. walking, standing and sitting can be inferred from data provided
  557. by body-worn acceleration sensors. In such settings, most approaches
  558. use a single set of features, regardless of which activity to be
  559. recognized. In this paper we show that recognition rates can be improved
  560. by careful selection of individual features for each activity. We
  561. present a systematic analysis of features computed from a real-world
  562. data set and show how the choice of feature and the window length
  563. over which the feature is computed affects the recognition rates
  564. for different activities. Finally, we give a recommendation of suitable
  565. features and window lengths for a set of common activities.},
  566. citeulike-article-id = {1076182},
  567. citeulike-linkout-0 = {http://portal.acm.org/citation.cfm?id=1107591},
  568. citeulike-linkout-1 = {http://dx.doi.org/10.1145/1107548.1107591},
  569. comment = {Better recognition rates when selecting features based on activity.
  570. Popular features: mean, standard deviation, energy, entropy, correleation
  571. between axis, discrete FFT coefficients. FFT features generally best,
  572. but different coefficients and windows for each activity.},
  573. doi = {10.1145/1107548.1107591},
  574. file = {Huynh2005.pdf:Huynh2005.pdf:PDF},
  575. isbn = {1-59593-304-2},
  576. keywords = {activity, recognition},
  577. location = {Grenoble, France},
  578. owner = {chris},
  579. posted-at = {2007-03-17 06:17:32},
  580. priority = {2},
  581. timestamp = {2009.12.06},
  582. url = {http://dx.doi.org/10.1145/1107548.1107591}
  583. }
  584. @MISC{Keerthi1999,
  585. author = {Keerthi, S. and Shevade, S. and Bhattacharyya, C. and Murthy, K.},
  586. title = {Improvements to Platt's SMO algorithm for SVM classifier design},
  587. year = {1999},
  588. abstract = {This paper points out an important source of confusion and ineciency
  589. in Platt's Sequential
  590. Minimal Optimization (SMO) algorithm that is caused by the use of
  591. a single threshold value.
  592. Using clues from the KKT conditions for the dual problem, two threshold
  593. parameters are employed
  594. to derive modi cations of SMO. These modi ed algorithms perform signi cantly
  595. faster
  596. than the original SMO on all benchmark datasets tried.
  597. 1 Introduction
  598. In the past few years, there has been a lot of excitement...},
  599. citeulike-article-id = {1772853},
  600. citeulike-linkout-0 = {http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.46.8538},
  601. file = {Keerthi1999.pdf:Keerthi1999.pdf:PDF},
  602. keywords = {smo, svm},
  603. owner = {chris},
  604. posted-at = {2008-04-12 20:18:51},
  605. priority = {2},
  606. timestamp = {2009.12.06},
  607. url = {http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.46.8538}
  608. }
  609. @INPROCEEDINGS{Lee2007,
  610. author = {Jae Young Lee and Hoff, W.},
  611. title = {Activity Identification Utilizing Data Mining Techniques},
  612. booktitle = {Proc. IEEE Workshop on Motion and Video Computing WMVC '07},
  613. year = {2007},
  614. pages = {12--12},
  615. month = {Feb. },
  616. doi = {10.1109/WMVC.2007.4},
  617. file = {Lee2007.pdf:Lee2007.pdf:PDF},
  618. owner = {chris},
  619. timestamp = {2009.12.03}
  620. }
  621. @INPROCEEDINGS{Lester2006,
  622. author = {Lester, Jonathan and Choudhury, Tanzeem and Borriello, Gaetano},
  623. title = {A Practical Approach to Recognizing Physical Activities},
  624. booktitle = {Pervasive Computing},
  625. year = {2006},
  626. pages = {1--16},
  627. = {We are developing a personal activity recognition system that is practical,
  628. reliable, and can be incorporated into a variety of health-care related
  629. applications ranging from personal fitness to elder care. To make
  630. our system appealing and useful, we require it to have the following
  631. properties: (i) data only from a single body location needed, and
  632. it is not required to be from the same point for every user; (ii)
  633. should work out of the box across individuals, with personalization
  634. only enhancing its recognition abilities; and (iii) should be effective
  635. even with a cost-sensitive subset of the sensors and data features.
  636. In this paper, we present an approach to building a system that exhibits
  637. these properties and provide evidence based on data for 8 different
  638. activities collected from 12 different subjects. Our results indicate
  639. that the system has an accuracy rate of approximately 90\% while
  640. meeting our requirements. We are now developing a fully embedded
  641. version of our system based on a cell-phone platform augmented with
  642. a Bluetooth-connected sensor board.},
  643. citeulike-article-id = {997656},
  644. citeulike-linkout-0 = {http://dx.doi.org/10.1007/11748625_1},
  645. citeulike-linkout-1 = {http://www.springerlink.com/content/7048888592382352},
  646. doi = {10.1007/11748625_1},
  647. file = {Lester2006.pdf:Lester2006.pdf:PDF},
  648. journal = {Pervasive Computing},
  649. keywords = {accelerometer, activity-recognition},
  650. owner = {chris},
  651. posted-at = {2007-10-12 10:21:05},
  652. priority = {2},
  653. timestamp = {2009.12.03},
  654. url = {http://dx.doi.org/10.1007/11748625_1}
  655. }
  656. @INPROCEEDINGS{Lester2005,
  657. author = {Lester, Jonathan and Choudhury, Tanzeem and Kern, Nicky and Borriello,
  658. Gaetano and Hannaford, Blake},
  659. title = {A hybrid discriminative/generative approach for modeling human activities},
  660. booktitle = {In Proc. of the International Joint Conference on Artificial Intelligence
  661. (IJCAI},
  662. year = {2005},
  663. pages = {766--772},
  664. abstract = {Accurate recognition and tracking of human activities is an important
  665. goal of ubiquitous computing. Recent advances in the development
  666. of multi-modal wearable sensors enable us to gather rich datasets
  667. of human activities. However, the problem of automatically identifying
  668. the most useful features for modeling such activities remains largely
  669. unsolved. In this paper we present a hybrid approach to recognizing
  670. activities, which combines boosting to discriminatively select useful
  671. features and learn an ensemble of static classifiers to recognize
  672. different activities, with hidden Markov models (HMMs) to capture
  673. the temporal regularities and smoothness of activities. We tested
  674. the activity recognition system using over 12 hours of wearable-sensor
  675. data collected by volunteers in natural unconstrained environments.
  676. The models succeeded in identifying a small set of maximally informative
  677. features, and were able identify ten different human activities with
  678. an accuracy of 95\%. 1},
  679. citeulike-article-id = {3291348},
  680. citeulike-linkout-0 = {http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.77.5776},
  681. file = {Lester2005.pdf:Lester2005.pdf:PDF},
  682. keywords = {transitgenie},
  683. owner = {chris},
  684. posted-at = {2009-07-11 19:30:29},
  685. priority = {4},
  686. timestamp = {2009.12.06},
  687. url = {http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.77.5776}
  688. }
  689. @ARTICLE{Liao2007,
  690. author = {Liao, Lin and Fox, Dieter and Kautz, Henry},
  691. title = {Extracting Places and Activities from GPS Traces Using Hierarchical
  692. Conditional Random Fields},
  693. journal = {Int. J. Rob. Res.},
  694. year = {2007},
  695. volume = {26},
  696. pages = {119--134},
  697. number = {1},
  698. abstract = {Learning patterns of human behavior from sensor data is extremely
  699. important for high-level activity inference. This paper describes
  700. how to extract a person's activities and significant places from
  701. traces of GPS data. The system uses hierarchically structured conditional
  702. random fields to generate a consistent model of a person's activities
  703. and places. In contrast to existing techniques, this approach takes
  704. the high-level context into account in order to detect the significant
  705. places of a person. Experiments show significant improvements over
  706. existing techniques. Furthermore, they indicate that the proposed
  707. system is able to robustly estimate a person's activities using a
  708. model that is trained from data collected by other persons.},
  709. address = {Thousand Oaks, CA, USA},
  710. citeulike-article-id = {3480910},
  711. citeulike-linkout-0 = {http://portal.acm.org/citation.cfm?id=1229555.1229562},
  712. citeulike-linkout-1 = {http://dx.doi.org/10.1177/0278364907073775},
  713. doi = {10.1177/0278364907073775},
  714. file = {Liao2007.pdf:Liao2007.pdf:PDF},
  715. issn = {0278-3649},
  716. keywords = {activity-prediction, place-finding},
  717. owner = {chris},
  718. posted-at = {2008-11-04 21:40:32},
  719. priority = {2},
  720. publisher = {Sage Publications, Inc.},
  721. timestamp = {2009.12.03},
  722. url = {http://dx.doi.org/10.1177/0278364907073775}
  723. }
  724. @ARTICLE{Liao2007b,
  725. author = {Liao, Lin and Patterson, Donald J. and Fox, Dieter and Kautz, Henry},
  726. title = {Learning and inferring transportation routines},
  727. journal = {Artificial Intelligence},
  728. year = {2007},
  729. volume = {171},
  730. pages = {311--331},
  731. number = {5-6},
  732. month = {April},
  733. = {This paper introduces a hierarchical Markov model that can learn and
  734. infer a user's daily movements through an urban community. The model
  735. uses multiple levels of abstraction in order to bridge the gap between
  736. raw GPS sensor measurements and high level information such as a
  737. user's destination and mode of transportation. To achieve efficient
  738. inference, we apply Rao-Blackwellized particle filters at multiple
  739. levels of the model hierarchy. Locations such as bus stops and parking
  740. lots, where the user frequently changes mode of transportation, are
  741. learned from GPS data logs without manual labeling of training data.
  742. We experimentally demonstrate how to accurately detect novel behavior
  743. or user errors (e.g. taking a wrong bus) by explicitly modeling activities
  744. in the context of the user's historical data. Finally, we discuss
  745. an application called "Opportunity Knocks" that employs our techniques
  746. to help cognitively-impaired people use public transportation safely.},
  747. citeulike-article-id = {1541495},
  748. citeulike-linkout-0 = {http://portal.acm.org/citation.cfm?id=1238288},
  749. citeulike-linkout-1 = {http://dx.doi.org/10.1016/j.artint.2007.01.006},
  750. citeulike-linkout-2 = {http://www.sciencedirect.com/science/article/B6TYF-4N49VP9-1/2/8f05b8caf7327ceb8762ab5e1b95efc9},
  751. doi = {10.1016/j.artint.2007.01.006},
  752. file = {Liao2007b.pdf:Liao2007b.pdf:PDF},
  753. keywords = {learning, statistical-inference},
  754. owner = {chris},
  755. posted-at = {2008-11-28 02:40:32},
  756. priority = {2},
  757. timestamp = {2010.01.13},
  758. url = {http://dx.doi.org/10.1016/j.artint.2007.01.006}
  759. }
  760. @ARTICLE{Lukowicz2002,
  761. author = {Lukowicz, P. and Junker, H. and St\"{a}ger, M. and von B\"{u}ren,
  762. T. and Tr\"{o}ster, G.},
  763. title = {WearNET: A Distributed Multi-sensor System for Context Aware Wearables},
  764. journal = {UbiComp 2002: Ubiquitous Computing},
  765. year = {2002},
  766. volume = {1},
  767. pages = {361--370},
  768. abstract = {This paper describes a distributed, multi-sensor system architecture
  769. designed to provide a wearable computer with a wide range of complex
  770. context information. Starting from an analysis of useful high level
  771. context information we present a top down design that focuses on
  772. the peculiarities of wearable applications. Thus, our design devotes
  773. particular attention to sensor placement, system partitioning as
  774. well as resource requirements given by the power consumption, computational
  775. intensity and communication overhead. We describe an implementation
  776. of our architecture and initial experimental results obtained with
  777. the system.},
  778. citeulike-article-id = {3909016},
  779. citeulike-linkout-0 = {http://dx.doi.org/10.1007/3-540-45809-3_28},
  780. citeulike-linkout-1 = {http://www.springerlink.com/content/kky208rx9e98m0xg},
  781. doi = {10.1007/3-540-45809-3_28},
  782. file = {Lukowicz2002.pdf:Lukowicz2002.pdf:PDF},
  783. keywords = {action, sensors},
  784. owner = {chris},
  785. posted-at = {2009-01-19 18:25:29},
  786. priority = {5},
  787. timestamp = {2009.12.03},
  788. url = {http://dx.doi.org/10.1007/3-540-45809-3_28}
  789. }
  790. @ARTICLE{Mathie2004,
  791. author = {Mathie, M. and Celler, B. and Lovell, N. and Coster, A.},
  792. title = {Classification of basic daily movements using a triaxial accelerometer},
  793. journal = {Medical and Biological Engineering and Computing},
  794. year = {2004},
  795. volume = {42},
  796. pages = {679--687},
  797. number = {5},
  798. month = {September},
  799. abstract = {Abstract\ \ A generic framework for the automated classification
  800. of human movements using an accelerometry monitoring system is introduced.
  801. The framework was structured around a binary decision tree in which
  802. movements were divided into classes and subclasses at different hierarchical
  803. levels. General distinctions between movements were applied in the
  804. top levels, and successively more detailed subclassifications were
  805. made in the lower levels of the tree. The structure was modular and
  806. flexible: parts of the tree could be reordered, pruned or extended,
  807. without the remainder of the tree being affected. This framework
  808. was used to develop a classifier to identify basic movements from
  809. the signals obtained from a single, waist-mounted triaxial accelerometer.
  810. The movements were first divided into activity and rest. The activities
  811. were classified as falls, walking, transition between postural orientations,
  812. or other movement. The postural orientations during rest were classified
  813. as sitting, standing or lying. In controlled laboratory studies in
  814. which 26 normal, healthy subjects carried out a set of basic movements,
  815. the sensitivity of every classification exceeded 87\%, and the specificity
  816. exceeded 94\%; the overall accuracy of the system, measured as the
  817. number of correct classifications across all levels of the hierarchy,
  818. was a sensitivity of 97.7\% and a specificity of 98.7\% over a data
  819. set of 1309 movements.},
  820. citeulike-article-id = {4636969},
  821. citeulike-linkout-0 = {http://dx.doi.org/10.1007/BF02347551},
  822. citeulike-linkout-1 = {http://www.springerlink.com/content/wm35501wq8352865},
  823. day = {12},
  824. doi = {10.1007/BF02347551},
  825. file = {Mathie2004.pdf:Mathie2004.pdf:PDF},
  826. owner = {chris},
  827. posted-at = {2009-05-26 20:42:51},
  828. timestamp = {2009.12.06},
  829. url = {http://dx.doi.org/10.1007/BF02347551}
  830. }
  831. @INPROCEEDINGS{Maurer2006,
  832. author = {Maurer, U. and Rowe, A. and Smailagic, A. and Siewiorek, D.P.},
  833. title = {eWatch: a wearable sensor and notification platform},
  834. booktitle = {Proc. International Workshop on Wearable and Implantable Body Sensor
  835. Networks BSN 2006},
  836. year = {2006},
  837. pages = {4 pp.--145},
  838. doi = {10.1109/BSN.2006.24},
  839. file = {Maurer2006.pdf:Maurer2006.pdf:PDF},
  840. keywords = {Bluetooth, biomedical equipment, electric sensing devices, patient
  841. monitoring, watches, wearable computers, Bluetooth communication,
  842. eWatch platform, notification platform, online nearest neighbor classification,
  843. power aware hardware, software architecture, wearable computing platform,
  844. wearable sensors, wireless links, wrist watch form factor},
  845. owner = {chris},
  846. timestamp = {2009.12.03}
  847. }
  848. @MISC{Miluzzo2009,
  849. author = {Miluzzo, E., and Oakley, J., and Lu, H., and Lane, N., and Peterson,
  850. R., and Campbell, A.},
  851. title = {Evaluating the iPhone as a Mobile Platform for People-Centric Sensing
  852. Applications},
  853. year = {2009},
  854. comment = {No background apps on iPhone, no access to BT or Wifi stacks.},
  855. file = {Miluzzo2009.pdf:Miluzzo2009.pdf:PDF},
  856. owner = {chris},
  857. timestamp = {2009.12.01}
  858. }
  859. @INPROCEEDINGS{Nicolai2006,
  860. author = {Tom Nicolai and Nils Behrens and Holger Kenn},
  861. title = {Exploring Social Context with the Wireless Rope},
  862. booktitle = {In Proc. Workshop MONET: LNCS 4277},
  863. year = {2006},
  864. comment = {Definition of familiar strangers. DynStra/DynFam formula.},
  865. file = {Nicolai2006.pdf:Nicolai2006.pdf:PDF},
  866. owner = {chris},
  867. timestamp = {2009.12.01}
  868. }
  869. @INPROCEEDINGS{Nurmi2006,
  870. author = {Nurmi, Petteri and Koolwaaij, Johan},
  871. title = {Identifying meaningful locations},
  872. booktitle = {Mobile and Ubiquitous Systems: Networking \& Services, 2006 Third
  873. Annual International Conference on},
  874. year = {2006},
  875. pages = {1--8},
  876. abstract = {Existing context-aware mobile applications often rely on location
  877. information. However, raw location data such as GPS coordinates or
  878. GSM cell identifiers are usually meaningless to the user and, as
  879. a consequence, researchers have proposed different methods for inferring
  880. so-called places from raw data. The places are locations that carry
  881. some meaning to user and to which the user can potentially attach
  882. some (meaningful) semantics. Examples of places include home, work
  883. and airport. A lack in existing work is that the labeling has been
  884. done in an ad hoc fashion and no motivation has been given for why
  885. places would be interesting to the user. As our first contribution
  886. we use social identity theory to motivate why some locations really
  887. are significant to the user. We also discuss what potential uses
  888. for location information social identity theory implies. Another
  889. flaw in the existing work is that most of the proposed methods are
  890. not suited to realistic mobile settings as they rely on the availability
  891. of GPS information. As our second contribution we consider a more
  892. realistic setting where the information consists of GSM cell transitions
  893. that are enriched with GPS information whenever a GPS device is available.
  894. We present four different algorithms for this problem and compare
  895. them using real data gathered throughout Europe. In addition, we
  896. analyze the suitability of our algorithms for mobile devices},
  897. citeulike-article-id = {2420217},
  898. citeulike-linkout-0 = {http://dx.doi.org/10.1109/MOBIQ.2006.340429},
  899. citeulike-linkout-1 = {http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnumber=4141782},
  900. comment = {Algorithms for identifying places, use cases, recognise commuting},
  901. doi = {10.1109/MOBIQ.2006.340429},
  902. file = {Nurmi2006.pdf:Nurmi2006.pdf:PDF},
  903. journal = {Mobile and Ubiquitous Systems: Networking \& Services, 2006 Third
  904. Annual International Conference on},
  905. keywords = {cs-location, read},
  906. owner = {chris},
  907. posted-at = {2008-02-24 02:03:54},
  908. priority = {2},
  909. timestamp = {2009.12.06},
  910. url = {http://dx.doi.org/10.1109/MOBIQ.2006.340429}
  911. }
  912. @ARTICLE{Parkka2006,
  913. author = {Parkka, J. and Ermes, M. and Korpipaa, P. and Mantyjarvi, J. and
  914. Peltola, J. and Korhonen, I.},
  915. title = {Activity classification using realistic data from wearable sensors},
  916. journal = {Information Technology in Biomedicine, IEEE Transactions on},
  917. year = {2006},
  918. volume = {10},
  919. pages = {119--128},
  920. number = {1},
  921. abstract = {Automatic classification of everyday activities can be used for promotion
  922. of health-enhancing physical activities and a healthier lifestyle.
  923. In this paper, methods used for classification of everyday activities
  924. like walking, running, and cycling are described. The aim of the
  925. study was to find out how to recognize activities, which sensors
  926. are useful and what kind of signal processing and classification
  927. is required. A large and realistic data library of sensor data was
  928. collected. Sixteen test persons took part in the data collection,
  929. resulting in approximately 31 h of annotated, 35-channel data recorded
  930. in an everyday environment. The test persons carried a set of wearable
  931. sensors while performing several activities during the 2-h measurement
  932. session. Classification results of three classifiers are shown: custom
  933. decision tree, automatically generated decision tree, and artificial
  934. neural network. The classification accuracies using leave-one-subject-out
  935. cross validation range from 58 to 97\% for custom decision tree classifier,
  936. from 56 to 97\% for automatically generated decision tree, and from
  937. 22 to 96\% for artificial neural network. Total classification accuracy
  938. is 82\% for custom decision tree classifier, 86\% for automatically
  939. generated decision tree, and 82\% for artificial neural network.},
  940. booktitle = {Information Technology in Biomedicine, IEEE Transactions on},
  941. citeulike-article-id = {3759728},
  942. citeulike-linkout-0 = {http://dx.doi.org/10.1109/TITB.2005.856863},
  943. citeulike-linkout-1 = {http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnumber=1573714},
  944. citeulike-linkout-2 = {http://dx.doi.org/http://dx.doi.org/10.1109/TITB.2005.856863},
  945. citeulike-linkout-3 = {http://dx.doi.org/10.1109/TITB.2005.856863},
  946. doi = {10.1109/TITB.2005.856863},
  947. file = {Parkka2006.pdf:Parkka2006.pdf:PDF;Parkka2006.pdf:Parkka2006.pdf:PDF},
  948. keywords = {activity, coact, health, walton, wearable},
  949. owner = {chris},
  950. posted-at = {2008-12-09 14:55:55},
  951. priority = {2},
  952. timestamp = {2009.12.03},
  953. url = {http://dx.doi.org/10.1109/TITB.2005.856863}
  954. }
  955. @MISC{Patterson2004,
  956. author = {Donald J. Patterson and Dieter Fox and Henry Kautz and Kenneth Fishkin
  957. and Mike Perkowitz and Matthai Philipose},
  958. title = {Contextual Computer Support for Human Activity},
  959. year = {2004},
  960. citeseercitationcount = {0},
  961. citeseerurl = {http://citeseer.ist.psu.edu/635960.html},
  962. file = {Patterson2004.pdf:Patterson2004.pdf:PDF},
  963. owner = {chris},
  964. timestamp = {2009.12.01}
  965. }
  966. @MISC{Philipose2003,
  967. author = {Matthai Philipose and Sunny Consolvo and Kenneth Fishkin and Perkowitz
  968. Ian Smith},
  969. title = {Fast, Detailed Inference of Diverse Daily Human Activities},
  970. year = {2003},
  971. file = {Philipose2003.pdf:Philipose2003.pdf:PDF},
  972. owner = {chris},
  973. timestamp = {2009.12.01}
  974. }
  975. @ARTICLE{Philipose2004,
  976. author = {Philipose, M. and Fishkin, K.P. and Perkowitz, M. and Patterson,
  977. D.J. and Fox, D. and Kautz, H. and Hahnel, D.},
  978. title = {Inferring activities from interactions with objects},
  979. journal = IEEE_M_PVC,
  980. year = {2004},
  981. volume = {3},
  982. pages = {50--57},
  983. number = {4},
  984. doi = {10.1109/MPRV.2004.7},
  985. file = {Philipose2004.pdf:Philipose2004.pdf:PDF},
  986. issn = {1536-1268},
  987. keywords = {computerised monitoring, data mining, home automation, home computing,
  988. radiofrequency identification, ubiquitous computing, ADL inferencing,
  989. ADL monitoring, Proactive Activity Toolkit, daily living activity
  990. recognition, daily living activity recording, data mining, elder
  991. care, pervasive computing, probabilistic inference engine, radio-frequency-identification
  992. technology, ADL monitoring, Proact, Proactive Activity Toolkit, context-aware
  993. computing, sensor networks},
  994. owner = {chris},
  995. timestamp = {2009.12.01}
  996. }
  997. @MISC{Philipose2003a,
  998. author = {Philipose, M. and Fishkin, K. and Perkowitz, M. and Patterson, D.
  999. and H\"ahnel, D.},
  1000. title = {The Probabilistic Activity Toolkit: Towards Enabling Activity-Aware
  1001. Computer Interfaces},
  1002. year = {2003},
  1003. file = {Philipose2003a.pdf:Philipose2003a.pdf:PDF},
  1004. owner = {chris},
  1005. timestamp = {2009.12.01}
  1006. }
  1007. @ARTICLE{Raento2005,
  1008. author = {Raento, Mika and Oulasvirta, Antti and Petit, Renaud and Toivonen,
  1009. Hannu},
  1010. title = {ContextPhone: A Prototyping Platform for Context-Aware Mobile Applications},
  1011. journal = {IEEE Pervasive Computing},
  1012. year = {2005},
  1013. volume = {4},
  1014. pages = {51--59},
  1015. number = {2},
  1016. month = {April},
  1017. abstract = {ContextPhone is an open-source prototyping platform for context-aware
  1018. mobile applications. Its development was based on an iterative, human-centered
  1019. strategy aimed at enabling real-world applications that are easily
  1020. integrated into users\&\#253; everyday lives. The strategy included
  1021. rapid response to feedback from field evaluations. The developers
  1022. also studied other applications as well as general mobility issues.
  1023. Their work resulted in prioritized design goals, including an emphasis
  1024. on context, unobtrusiveness, truthfulness, seamfulness, timeliness
  1025. and fast interaction. These design goals have been realized in several
  1026. robust components running on top of the Series 60 Smartphone platform.
  1027. These components include basic services like error recovery and service
  1028. starting, sensors for gathering context data, communication channels
  1029. for interacting with the outside world, and customizable versions
  1030. of the Smartphone applications. Several real-world applications have
  1031. been built on top of ContextPhone and the platform is released under
  1032. an open-source license for use in further research.},
  1033. address = {Piscataway, NJ, USA},
  1034. booktitle = {Pervasive Computing, IEEE},
  1035. citeulike-article-id = {2926228},
  1036. citeulike-linkout-0 = {http://portal.acm.org/citation.cfm?id=1070601.1070628},
  1037. citeulike-linkout-1 = {http://dx.doi.org/10.1109/MPRV.2005.29},
  1038. citeulike-linkout-2 = {http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnumber=1427649},
  1039. doi = {10.1109/MPRV.2005.29},
  1040. file = {Raento2005.pdf:Raento2005.pdf:PDF},
  1041. issn = {1536-1268},
  1042. keywords = {adaptive\_interfaces, location\_aware\_computing},
  1043. owner = {chris},
  1044. posted-at = {2008-06-25 17:18:22},
  1045. priority = {2},
  1046. publisher = {IEEE Educational Activities Department},
  1047. timestamp = {2009.12.06},
  1048. url = {http://dx.doi.org/10.1109/MPRV.2005.29}
  1049. }
  1050. @INPROCEEDINGS{Ravi2005,
  1051. author = {Ravi, Nishkam and Nikhil, D. and Mysore, Preetham and Littman, Michael
  1052. L.},
  1053. title = {Activity recognition from accelerometer data},
  1054. booktitle = {Proceedings of the Seventeenth Conference on Innovative Applications
  1055. of Artificial Intelligence(IAAI},
  1056. year = {2005},
  1057. pages = {1541--1546},
  1058. abstract = {Activity recognition fits within the bigger framework of context awareness.
  1059. In this paper, we report on our efforts to recognize user activity
  1060. from accelerometer data. Activity recognition is formulated as a
  1061. classification problem. Performance of base-level classifiers and
  1062. meta-level classifiers is compared. Plurality Voting is found to
  1063. perform consistently well across different settings.},
  1064. citeulike-article-id = {5157220},
  1065. citeulike-linkout-0 = {http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.92.1333},
  1066. citeulike-linkout-1 = {https://www.aaai.org/Papers/IAAI/2005/IAAI05-013.pdf},
  1067. file = {Ravi2005.pdf:Ravi2005.pdf:PDF},
  1068. keywords = {accelerometer, activity-inferencing},
  1069. owner = {chris},
  1070. posted-at = {2009-07-15 10:33:20},
  1071. priority = {2},
  1072. timestamp = {2009.12.06},
  1073. url = {http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.92.1333}
  1074. }
  1075. @ARTICLE{Reynolds2008,
  1076. author = {Reynolds, F.},
  1077. title = {Camera Phones: A Snapshot of Research and Applications},
  1078. journal = IEEE_M_PVC,
  1079. year = {2008},
  1080. volume = {7},
  1081. pages = {16--19},
  1082. number = {2},
  1083. month = {April--June },
  1084. comment = {"over one billion camera phones were sold last year"},
  1085. doi = {10.1109/MPRV.2008.28},
  1086. file = {Reynolds2008.pdf:Reynolds2008.pdf:PDF;Reynolds2008.pdf:Reynolds2008.pdf:PDF},
  1087. owner = {chris},
  1088. timestamp = {2009.12.01}
  1089. }
  1090. @INPROCEEDINGS{Rudstroem2004,
  1091. author = {Asa Rudstr\"om and Martinn Svensson and Martin Svensson and Rickard
  1092. C\"oster and Kristina H\"o\"ok},
  1093. title = {MobiTip: Using Bluetooth as a Mediator of Social Context},
  1094. booktitle = {In Ubicomp 2004 Adjunct Proceedings},
  1095. year = {2004},
  1096. file = {Rudstroem2004.pdf:Rudstroem2004.pdf:PDF},
  1097. owner = {chris},
  1098. timestamp = {2009.12.01}
  1099. }
  1100. @MISC{Salber1999,
  1101. author = {Salber, Daniel and Dey, Anind K. and Abowd, Gregory D.},
  1102. title = {The Context Toolkit: Aiding the Development of Context-Enabled Applications},
  1103. year = {1999},
  1104. abstract = {Context-enabled applications are just emerging and promise richer
  1105. interaction by taking environmental context into account. However,
  1106. they are difficult to build due to their distributed nature and the
  1107. use of unconventional sensors. The concepts of toolkits and widget
  1108. libraries in graphical user interfaces has been tremendously successful,
  1109. allowing programmers to leverage off existing building blocks to
  1110. build interactive systems more easily. We introduce the concept of
  1111. context widgets that mediate between the environment and the application
  1112. in the same way graphical widgets mediate between the user and the
  1113. application. We illustrate the concept of context widgets with the
  1114. beginnings of a widget library we have developed for sensing presence,
  1115. identity and activity of people and things. We assess the success
  1116. of our approach with two example context-enabled applications we
  1117. have built and an existing application to which we have added contextsensing
  1118. capabilities.},
  1119. citeulike-article-id = {3753280},
  1120. citeulike-linkout-0 = {http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.32.2110},
  1121. citeulike-linkout-1 = {http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.32.2110},
  1122. file = {Salber1999.pdf:Salber1999.pdf:PDF},
  1123. keywords = {applications, context, context\_awareness, toolkit},
  1124. owner = {chris},
  1125. pages = {434--441},
  1126. posted-at = {2008-12-07 12:33:46},
  1127. priority = {4},
  1128. timestamp = {2009.12.06},
  1129. url = {http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.32.2110}
  1130. }
  1131. @MISC{Schapire1999,
  1132. author = {Schapire, Robert E.},
  1133. title = {A Brief Introduction to Boosting},
  1134. year = {1999},
  1135. abstract = {Boosting is a general method for improving the accuracy of any given
  1136. learning algorithm. This short paper introduces the boosting algorithm
  1137. AdaBoost, and explains the underlying theory of boosting, including
  1138. an explanation of why boosting often does not suffer from overfitting.
  1139. Some examples of recent applications of boosting are also described.
  1140. Background Boosting is a general method which attempts to \&\#034;boost\&\#034;
  1141. the accuracy of any given learning algorithm. Boosting has its roots
  1142. in a theoretical framework for studying machine learning called the
  1143. \&\#034;PAC\&\#034; learning model, due to Valiant [37]; see Kearns
  1144. and Vazirani [24] for a good introduction to this model. Kearns and
  1145. Valiant [22, 23] were the first to pose the question of whether a
  1146. \&\#034;weak\&\#034; learning algorithm which performs just slightly
  1147. better than random guessing in the PAC model can be \&\#034;boosted\&\#034;
  1148. into an arbitrarily accurate \&\#034;strong\&\#034; learning algorithm.
  1149. Schapire [30] came up with the first provable polynomial-time boosting
  1150. algorithm in ...},
  1151. citeulike-article-id = {6212085},
  1152. citeulike-linkout-0 = {http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.7.8772},
  1153. file = {Schapire1999.pdf:Schapire1999.pdf:PDF},
  1154. keywords = {boosting},
  1155. owner = {chris},
  1156. posted-at = {2009-11-25 20:48:42},
  1157. priority = {2},
  1158. timestamp = {2009.12.03},
  1159. url = {http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.7.8772}
  1160. }
  1161. @MISC{Schilit1994,
  1162. author = {Bill Schilit and Norman Adams and Roy Want},
  1163. title = {Context-Aware Computing Applications},
  1164. year = {1994},
  1165. citeseercitationcount = {0},
  1166. citeseerurl = {http://citeseer.ist.psu.edu/339782.html},
  1167. file = {Schilit1994.pdf:Schilit1994.pdf:PDF},
  1168. owner = {chris},
  1169. timestamp = {2009.12.01}
  1170. }
  1171. @MISC{Schmidt2008,
  1172. author = {Albrecht Schmidt and Kofi Asante Aidoo and Antti Takaluoma and Urpo
  1173. Tuomela and Kristof Van Laerhoven and Walter Van de Velde},
  1174. title = {iLearn on the iPhone: Real-Time Human Activity Classification on
  1175. Commodity Mobile Phones},
  1176. year = {2008},
  1177. file = {Schmidt2008.pdf:Schmidt2008.pdf:PDF},
  1178. owner = {chris},
  1179. timestamp = {2009.12.03}
  1180. }
  1181. @ARTICLE{Schmidt1999,
  1182. author = {Schmidt, A. and Aidoo, K. A. and Takaluoma, A. and Tuomela, U. and
  1183. Van Laerhoven, K. and Van de Velde, W.},
  1184. title = {Advanced Interaction in Context},
  1185. journal = {Lecture Notes in Computer Science},
  1186. year = {1999},
  1187. volume = {1707},
  1188. pages = {89--??},
  1189. abstract = {. Mobile information appliances are increasingly used in numerous
  1190. different situations and locations, setting new requirements to their
  1191. interaction
  1192. methods. When the user's situation, place or activity changes, the
  1193. functionality
  1194. of the device should adapt to these changes. In this work we propose
  1195. a layered
  1196. real-time architecture for this kind of context-aware adaptation based
  1197. on
  1198. redundant collections of low-level sensors. Two kinds of sensors are
  1199. distinguished: physical and logical...},
  1200. citeulike-article-id = {1284635},
  1201. citeulike-linkout-0 = {http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.40.2408},
  1202. file = {Schmidt1999.pdf:Schmidt1999.pdf:PDF},
  1203. keywords = {context, mobile, pervasive, ubicomp},
  1204. owner = {chris},
  1205. posted-at = {2007-05-09 07:15:21},
  1206. priority = {4},
  1207. timestamp = {2009.12.03},
  1208. url = {http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.40.2408}
  1209. }
  1210. @MISC{Shen2004,
  1211. author = {Jianqiang Shen},
  1212. title = {Machine Learning for Activity Recognition},
  1213. year = {2004},
  1214. file = {Shen2004.pdf:Shen2004.pdf:PDF},
  1215. owner = {chris},
  1216. timestamp = {2009.12.01}
  1217. }
  1218. @INPROCEEDINGS{Siewiorek2003,
  1219. author = {Siewiorek, D. and Smailagic, A. and Furukawa, J. and Krause, A. and
  1220. Moraveji, N. and Reiger, K. and Shaffer, J. and Wong, Fei L.},
  1221. title = {SenSay: a context-aware mobile phone},
  1222. booktitle = {Wearable Computers, 2003. Proceedings. Seventh IEEE International
  1223. Symposium on},
  1224. year = {2003},
  1225. pages = {248--249},
  1226. citeulike-article-id = {898575},
  1227. citeulike-linkout-0 = {http://dx.doi.org/10.1109/ISWC.2003.1241422},
  1228. citeulike-linkout-1 = {http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnumber=1241422},
  1229. doi = {10.1109/ISWC.2003.1241422},
  1230. file = {Siewiorek2003.pdf:Siewiorek2003.pdf:PDF},
  1231. journal = {Wearable Computers, 2003. Proceedings. Seventh IEEE International
  1232. Symposium on},
  1233. keywords = {aware, context, mobile, phone},
  1234. owner = {chris},
  1235. posted-at = {2008-09-16 14:38:06},
  1236. priority = {2},
  1237. timestamp = {2009.12.06},
  1238. url = {http://dx.doi.org/10.1109/ISWC.2003.1241422}
  1239. }
  1240. @INPROCEEDINGS{Song2005,
  1241. author = {Song, K. and Wang, Y.},
  1242. title = {Remote Activity Monitoring of the Elderly Using a Two-Axis Accelerometer},
  1243. booktitle = {CACS Automatic Control Conference},
  1244. year = {2005},
  1245. file = {Song2005.pdf:Song2005.pdf:PDF},
  1246. owner = {chris},
  1247. timestamp = {2009.12.01}
  1248. }
  1249. @ARTICLE{Stiefmeier2008,
  1250. author = {Stiefmeier, T. and Roggen, D. and Troster, G. and Ogris, G. and Lukowicz,
  1251. P.},
  1252. title = {Wearable Activity Tracking in Car Manufacturing},
  1253. journal = IEEE_M_PVC,
  1254. year = {2008},
  1255. volume = {7},
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