Title :
Time series segmentation for context recognition in mobile devices
Author :
Himberg, Johan ; Korpiaho, Kalle ; Mannila, Heikki ; Tikanmaki, Johanna ; Toivonen, Hannu T T
Author_Institution :
Software Technol. Lab., Nokia Res. Center, Finland
Abstract :
Recognizing the context of use is important in making mobile devices as simple to use as possible. Finding out what the user´s situation is can help the device and underlying service in providing an adaptive and personalized user interface. The device can infer parts of the context of the user from sensor data: the mobile device can include sensors for acceleration, noise level, luminosity, humidity, etc. In this paper we consider context recognition by unsupervised segmentation of time series produced by sensors. Dynamic programming can be used to find segments that minimize the intra-segment variances. While this method produces optimal solutions, it is too slow for long sequences of data. We present and analyze randomized variations of the algorithm. One of them, global iterative replacement or GIR, gives approximately optimal results in a fraction of the time required by dynamic programming. We demonstrate the use of time series segmentation in context recognition for mobile phone applications
Keywords :
cellular radio; dynamic programming; sensor fusion; time series; user interfaces; acceleration; adaptive personalized user interface; context recognition; dynamic programming; global iterative replacement; humidity; luminosity; minimized intrasegment variances; mobile devices; mobile phone applications; noise level; randomized algorithm; sensor data; time series segmentation; Acceleration; Algorithm design and analysis; Context awareness; Cost function; Dynamic programming; Humidity; Laboratories; Mobile communication; Mobile handsets; Noise level;
Conference_Titel :
Data Mining, 2001. ICDM 2001, Proceedings IEEE International Conference on
Conference_Location :
San Jose, CA
Print_ISBN :
0-7695-1119-8
DOI :
10.1109/ICDM.2001.989520