articleJul 25, 2015Closed access

Deep convolutional neural networks on multichannel time series for human activity recognition

Agency for Science, Technology and Research · Institute for Infocomm Research

Abstract

This paper focuses on human activity recognition (HAR) problem, in which inputs are multichannel time series signals acquired from a set of body-worn inertial sensors and outputs are predefined hu-man activities. In this problem, extracting effec-tive features for identifying activities is a critical but challenging task. Most existing work relies on heuristic hand-crafted feature design and shallow feature learning architectures, which cannot find those distinguishing features to accurately classify different activities. In this paper, we propose a sys-tematic feature learning method for HAR problem. This method adopts a deep convolutional neural networks (CNN) to automate feature learning from the raw inputs…

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