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Stacked deep analytic model for human activity recognition on a UCI HAR database [version 2; peer review: 2 approved]

Authors :
Ying Han Pang
Liew Yee Ping
Goh Fan Ling
Ooi Shih Yin
Khoh Wee How
Author Affiliations :
<relatesTo>1</relatesTo>Faculty of Information Science and Technology, Multimedia University, Ayer Keroh, Melaka, 75450, Malaysia<br /><relatesTo>2</relatesTo>Millapp Sdn Bhd, Bangsar South, Kuala Lumpur, 59200, Malaysia
Source :
F1000Research. 10:1046
Publication Year :
2022
Publisher :
London, UK: F1000 Research Limited, 2022.

Abstract

Background Owing to low cost and ubiquity, human activity recognition using smartphones is emerging as a trendy mobile application in diverse appliances such as assisted living, healthcare monitoring, etc. Analysing this one-dimensional time-series signal is rather challenging due to its spatial and temporal variances. Numerous deep neural networks (DNNs) are conducted to unveil deep features of complex real-world data. However, the drawback of DNNs is the un-interpretation of the network's internal logic to achieve the output. Furthermore, a huge training sample size (i.e. millions of samples) is required to ensure great performance. Methods In this work, a simpler yet effective stacked deep network, known as Stacked Discriminant Feature Learning (SDFL), is proposed to analyse inertial motion data for activity recognition. Contrary to DNNs, this deep model extracts rich features without the prerequisite of a gigantic training sample set and tenuous hyper-parameter tuning. SDFL is a stacking deep network with multiple learning modules, appearing in a serialized layout for multi-level feature learning from shallow to deeper features. In each learning module, Rayleigh coefficient optimized learning is accomplished to extort discriminant features. A subject-independent protocol is implemented where the system model (trained by data from a group of users) is used to recognize data from another group of users. Results Empirical results demonstrate that SDFL surpasses state-of-the-art methods, including DNNs like Convolutional Neural Network, Deep Belief Network, etc., with ~97% accuracy from the UCI HAR database with thousands of training samples. Additionally, the model training time of SDFL is merely a few minutes, compared with DNNs, which require hours for model training. Conclusions The supremacy of SDFL is corroborated in analysing motion data for human activity recognition requiring no GPU but only a CPU with a fast- learning rate.

Details

ISSN :
20461402
Volume :
10
Database :
F1000Research
Journal :
F1000Research
Notes :
Revised Amendments from Version 1 In the revised version, we have revised the motivation and contributions of the work to ensure a clearer description. In addition, we also have revised the Method section to include the information of data/feature dimensionalities and parameters for better clarification. Inter-personnel inertial signal patterns of an activity example (i.e. standing activity) is added to show the inter-personnel signal pattern variances of the same activity. Besides, the hardware and software details as well as the dataset details are re-organized to the Method section, as advised by the reviewer. On top of that, confusion matrices of the evaluation matrices are computed and disclosed in this revised version. The performance comparison table has been revised to include the benchmark method that is proposed by the UCI database provider. These changes are reflected in changes to the figures and tables within the article., , [version 2; peer review: 2 approved]
Publication Type :
Academic Journal
Accession number :
edsfor.10.12688.f1000research.73174.2
Document Type :
research-article
Full Text :
https://doi.org/10.12688/f1000research.73174.2