A novel ensemble ELM for human activity recognition using smartphone sensors
Human activity recognition plays a unique role in many important applications, including ubiquitous computing, health-care services, and smart buildings. Due to the nonintrusive property of smartphones, smartphone sensors are widely used for the identification of human activities. Since the signals...
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sg-ntu-dr.10356-1509952021-06-02T08:54:21Z A novel ensemble ELM for human activity recognition using smartphone sensors Chen, Zhenghua Jiang, Chaoyang Xie, Lihua School of Electrical and Electronic Engineering Institute for Infocomm Research, A*STAR Engineering::Electrical and electronic engineering Ensemble Extreme Learning Machine Feature Engineering Human activity recognition plays a unique role in many important applications, including ubiquitous computing, health-care services, and smart buildings. Due to the nonintrusive property of smartphones, smartphone sensors are widely used for the identification of human activities. Since the signals of smartphone sensors are quite noisy, feature engineering will be performed to extract more discriminant representations. Then, various machine learning algorithms can be employed to recognize different human activities. Extreme learning machine (ELM) has been shown to be effective in classification tasks with extremely fast learning speed. Due to its randomness property, it is naturally suitable for ensemble learning. In this paper, we propose a novel ensemble ELM algorithm for human activity recognition using smartphone sensors. Gaussian random projection is employed to initialize the input weights of base ELMs. By doing this, more diversities can be generated to boost the performance of ensemble learning. Real experimental data has been applied to evaluate the performance of our proposed approach. We also conduct a comparison of the proposed approach with some state-of-the-art approaches in the literature. The experimental results indicate that our proposed ensemble ELM approach outperforms these approaches and can achieve recognition accuracies of 97.35\% and 98.88\% on two datasets. Building and Construction Authority (BCA) National Research Foundation (NRF) This work was supported by National Research Foundation and Building Construction Authority of Singapore under Grant NRF2013EWTEIRP004-012. Paper no. TII-18-1491. (Corresponding author: Chaoyang Jiang.) 2021-06-02T08:54:21Z 2021-06-02T08:54:21Z 2018 Journal Article Chen, Z., Jiang, C. & Xie, L. (2018). A novel ensemble ELM for human activity recognition using smartphone sensors. IEEE Transactions On Industrial Informatics, 15(5), 2691-2699. https://dx.doi.org/10.1109/TII.2018.2869843 1551-3203 0000-0002-1719-0328 0000-0002-8669-2911 0000-0002-7137-4136 https://hdl.handle.net/10356/150995 10.1109/TII.2018.2869843 2-s2.0-85053326077 5 15 2691 2699 en NRF2013EWTEIRP004-012 IEEE Transactions on Industrial Informatics © 2018 IEEE. All rights reserved. |
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Engineering::Electrical and electronic engineering Ensemble Extreme Learning Machine Feature Engineering Chen, Zhenghua Jiang, Chaoyang Xie, Lihua A novel ensemble ELM for human activity recognition using smartphone sensors |
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Human activity recognition plays a unique role in many important applications, including ubiquitous computing, health-care services, and smart buildings. Due to the nonintrusive property of smartphones, smartphone sensors are widely used for the identification of human activities. Since the signals of smartphone sensors are quite noisy, feature engineering will be performed to extract more discriminant representations. Then, various machine learning algorithms can be employed to recognize different human activities. Extreme learning machine (ELM) has been shown to be effective in classification tasks with extremely fast learning speed. Due to its randomness property, it is naturally suitable for ensemble learning. In this paper, we propose a novel ensemble ELM algorithm for human activity recognition using smartphone sensors. Gaussian random projection is employed to initialize the input weights of base ELMs. By doing this, more diversities can be generated to boost the performance of ensemble learning. Real experimental data has been applied to evaluate the performance of our proposed approach. We also conduct a comparison of the proposed approach with some state-of-the-art approaches in the literature. The experimental results indicate that our proposed ensemble ELM approach outperforms these approaches and can achieve recognition accuracies of 97.35\% and 98.88\% on two datasets. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Chen, Zhenghua Jiang, Chaoyang Xie, Lihua |
format |
Article |
author |
Chen, Zhenghua Jiang, Chaoyang Xie, Lihua |
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Chen, Zhenghua |
title |
A novel ensemble ELM for human activity recognition using smartphone sensors |
title_short |
A novel ensemble ELM for human activity recognition using smartphone sensors |
title_full |
A novel ensemble ELM for human activity recognition using smartphone sensors |
title_fullStr |
A novel ensemble ELM for human activity recognition using smartphone sensors |
title_full_unstemmed |
A novel ensemble ELM for human activity recognition using smartphone sensors |
title_sort |
novel ensemble elm for human activity recognition using smartphone sensors |
publishDate |
2021 |
url |
https://hdl.handle.net/10356/150995 |
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1702431253905539072 |