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  5. Deep Convolutional Networks With Tunable Speed–Accuracy Tradeoff for Human Activity Recognition Using Wearables

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Article
en
2021

Deep Convolutional Networks With Tunable Speed–Accuracy Tradeoff for Human Activity Recognition Using Wearables

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en
2021
Vol 71
Vol. 71
DOI: 10.1109/tim.2021.3132088

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Aiguo Song
Aiguo Song

Institution not specified

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Xing Wang
Lei Zhang
Wenbo Huang
+4 more

Abstract

Activity recognition plays a critical role in various applications, such as medical monitoring and rehabilitation. Deep learning has recently made great development in the wearable-based human activity recognition (HAR) area. However, real HAR applications should be adaptive and flexible to the available computational budget. So far, this problem has rarely been explored. In contrast to existing deep HAR studies focusing on static networks, this article aims to investigate adaptive networks, which can adjust their structure conditioned on available computing resources to trade off between accuracy and speed. We, for the first time, present an adaptive convolutional neural network by dynamically modifying network width. Specifically, first, instead of a normal convolution, the network is stacked by lower triangular convolutional layers in order to remove the impact of activation statistics caused by varying widths. Second, instead of fixed sampling, we perform random sampling over width, which can provide smooth control for the tradeoff between accuracy and speed. As a consequence, the networks with different widths are simultaneously trained as subnetworks by accumulating their losses during each iteration. On multiple HAR datasets, such as UCI-HAR, PAMAP2, and OPPORTUNITY, extensive experiments verify that the proposed approach can consistently provide further improved efficiency on top of state-of-the-art CNNs for HAR. Finally, evaluations are conducted on a Raspberry Pi platform to demonstrate its usefulness and practicality.

How to cite this publication

Xing Wang, Lei Zhang, Wenbo Huang, Shuoyuan Wang, Hao Wu, Jun He, Aiguo Song (2021). Deep Convolutional Networks With Tunable Speed–Accuracy Tradeoff for Human Activity Recognition Using Wearables. , 71, DOI: https://doi.org/10.1109/tim.2021.3132088.

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Publication Details

Type

Article

Year

2021

Authors

7

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.1109/tim.2021.3132088

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