Semi-Markov kMeans Clustering and Activity Recognition from Body-Worn Sensors

Date

2009

Authors

Robards, Matthew
Sunehag, Peter

Journal Title

Journal ISSN

Volume Title

Publisher

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.

Description

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

Citation

Source

Proceedings of the IEEE International Conference on Data Mining (ICDM 2009)

Type

Conference paper

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Restricted until

2037-12-31