Semi-Markov kMeans Clustering and Activity Recognition from Body-Worn Sensors
Date
2009
Authors
Robards, Matthew
Sunehag, Peter
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IEEE Computer Society
Abstract
Subsequence clustering aims to find patterns that appear repeatedly in time series data. We introduce a novel subsequence clustering technique that we call semi-Markov kmeans clustering. The clustering results in ideal examples of the repeating patterns and in labeled segmentations that can be used as training data for sophisticated discriminative methods like max-margin semi-Markov models. We are applying the new clustering technique to activity recognition from body-worn sensors by showing how it can enable a system to learn from data that is only annotated by an ordered list of activity types that have been undertaken. This kind of annotation, unlike a detailed segmentation of the sensor data, is easily provided by a non-expert user. We show that we can achieve equally good results using only an ordered list of activity types for training as when using a full detailed labeled segmentation.
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Keywords
Keywords: Activity recognition; Body-worn sensors; Clustering results; Clustering techniques; Discriminative methods; Expert users; K-means clustering; Semi Markov model; Semi-Markov; Sensor data; Time-series data; Training data; Clustering algorithms; Markov proce Activity recognition; Clustering; Subsequence; Time-series
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Source
Proceedings of the IEEE International Conference on Data Mining (ICDM 2009)
Type
Conference paper
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2037-12-31
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