Multilayer perceptron neural network classification for human vertical ground reaction forces

© 2014 IEEE. In this paper, human motion classification using multilayered neural network is proposed to classify motion signal based on vertical ground resultant force (VGRF). VRGF readings were acquired using an instrumented treadmill. The work presented in this paper seeks to classify six activit...

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Main Authors: Goh, K., Lim, Hann, Gopalai, A., Chong, Y.
Format: Conference Paper
Published: 2015
Online Access:http://hdl.handle.net/20.500.11937/19166
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author Goh, K.
Lim, Hann
Gopalai, A.
Chong, Y.
author_facet Goh, K.
Lim, Hann
Gopalai, A.
Chong, Y.
author_sort Goh, K.
building Curtin Institutional Repository
collection Online Access
description © 2014 IEEE. In this paper, human motion classification using multilayered neural network is proposed to classify motion signal based on vertical ground resultant force (VGRF). VRGF readings were acquired using an instrumented treadmill. The work presented in this paper seeks to classify six activities i.e. standing to walking, walking, walking to jogging, jogging, jogging to running and running, based on the measured VGRF. The data set involved 229 healthy Asians aged between 20 and 24, yielding a total of 740 activity classes. All activities varied as a result of subjects' desired speed. However, it was observed that the VGRF of the last five strides reaction forces was sufficient to achieve 83% classification rate for the training set and 73% for testing set. The influence of number of hidden neurons was also analyzed to obtain optimal classification performance.
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format Conference Paper
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institution Curtin University Malaysia
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last_indexed 2025-11-14T07:29:09Z
publishDate 2015
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spelling curtin-20.500.11937-191662017-09-13T15:42:44Z Multilayer perceptron neural network classification for human vertical ground reaction forces Goh, K. Lim, Hann Gopalai, A. Chong, Y. © 2014 IEEE. In this paper, human motion classification using multilayered neural network is proposed to classify motion signal based on vertical ground resultant force (VGRF). VRGF readings were acquired using an instrumented treadmill. The work presented in this paper seeks to classify six activities i.e. standing to walking, walking, walking to jogging, jogging, jogging to running and running, based on the measured VGRF. The data set involved 229 healthy Asians aged between 20 and 24, yielding a total of 740 activity classes. All activities varied as a result of subjects' desired speed. However, it was observed that the VGRF of the last five strides reaction forces was sufficient to achieve 83% classification rate for the training set and 73% for testing set. The influence of number of hidden neurons was also analyzed to obtain optimal classification performance. 2015 Conference Paper http://hdl.handle.net/20.500.11937/19166 10.1109/IECBES.2014.7047559 restricted
spellingShingle Goh, K.
Lim, Hann
Gopalai, A.
Chong, Y.
Multilayer perceptron neural network classification for human vertical ground reaction forces
title Multilayer perceptron neural network classification for human vertical ground reaction forces
title_full Multilayer perceptron neural network classification for human vertical ground reaction forces
title_fullStr Multilayer perceptron neural network classification for human vertical ground reaction forces
title_full_unstemmed Multilayer perceptron neural network classification for human vertical ground reaction forces
title_short Multilayer perceptron neural network classification for human vertical ground reaction forces
title_sort multilayer perceptron neural network classification for human vertical ground reaction forces
url http://hdl.handle.net/20.500.11937/19166