DocumentCode
1185894
Title
Inferring activities from interactions with objects
Author
Philipose, Matthai ; Fishkin, Kenneth P. ; Perkowitz, Mike ; Patterson, Donald J. ; Fox, Dieter ; Kautz, Henry ; Hähnel, Dirk
Author_Institution
Intel Res., Seattle, WA, USA
Volume
3
Issue
4
fYear
2004
Firstpage
50
Lastpage
57
Abstract
A key aspect of pervasive computing is using computers and sensor networks to effectively and unobtrusively infer users´ behavior in their environment. This includes inferring which activity users are performing, how they´re performing it, and its current stage. Recognizing and recording activities of daily living is a significant problem in elder care. A new paradigm for ADL inferencing leverages radio-frequency-identification technology, data mining, and a probabilistic inference engine to recognize ADLs, based on the objects people use. We propose an approach that addresses these challenges and shows promise in automating some types of ADL monitoring. Our key observation is that the sequence of objects a person uses while performing an ADL robustly characterizes both the ADL´s identity and the quality of its execution. So, we have developed Proactive Activity Toolkit (PROACT).
Keywords
computerised monitoring; data mining; home automation; home computing; radiofrequency identification; ubiquitous computing; ADL inferencing; ADL monitoring; Proactive Activity Toolkit; daily living activity recognition; daily living activity recording; data mining; elder care; pervasive computing; probabilistic inference engine; radio-frequency-identification technology; Context modeling; Engines; Monitoring; Pervasive computing; RFID tags; Radio frequency; Radiofrequency identification; Robustness; Sensor phenomena and characterization; Sensor systems; ADL monitoring; Proact; Proactive Activity Toolkit; context-aware computing; sensor networks;
fLanguage
English
Journal_Title
Pervasive Computing, IEEE
Publisher
ieee
ISSN
1536-1268
Type
jour
DOI
10.1109/MPRV.2004.7
Filename
1369161
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