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Our focus in this research is on the use of deep learning approaches for human activity recognition (HAR) scenario, in which inputs are multichannel time series signals acquired from a set of body-worn inertial sensors and outputs are predefined human activities. Here, we present a feature learning method that deploys convolutional neural networks (CNN) to automate feature learning from the raw inputs in a systematic way. The influence of various important hyper-parameters such as number of convolutional layers and kernel size on the performance of CNN was monitored. Experimental results indicate that CNNs achieved significant speed-up in computing and deciding the final class and marginal improvement in overall classification accuracy compared to the baseline models such as Support Vector Machines and Multi-layer perceptron networks.
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Tahmina Zebin
Brunel University of London
Patricia Scully
University College Dublin
Krikor Ozanyan
University of Manchester
University of Manchester
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Zebin et al. (Sat,) studied this question.
synapsesocial.com/papers/6a1d17d9cc9f7df1b704dd76 — DOI: https://doi.org/10.1109/icsens.2016.7808590