4.7 Article

Efficient skeleton-based action recognition via multi-stream depthwise separable convolutional neural network

Journal

EXPERT SYSTEMS WITH APPLICATIONS
Volume 226, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.eswa.2023.120080

Keywords

Skeleton-based action recognition; Lightweight; Multi-scale motion information; Depthwise separable convolution

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This study proposes an efficient skeleton-based action recognition approach, called Lightweight Double-feature Triple-scale motion Network (LDT-NET), based on multi-stream neural networks. By endowing a lightweight network structure, LDT-NET achieves promising performance on multiple famous datasets and achieves a 25% speedup compared to the latest representative work. Additionally, it has only about 20% of the model parameter of the latest work.
Skeleton-based human action recognition has attracted considerable attention and achieved great success in several engineering fields, which is also one of the most active research topic in computer vision community. However, the existing methods may suffer from a large model size and slow execution speed. In addition, some useful information embedded in skeleton sequence, such as the motion information with different scales, had not been fully utilized, such that the performance of recognition is compromised or decreased. To this end, we propose an efficient skeleton-based action recognition approach based on multi-stream neural networks, namely Lightweight Double-feature Triple-scale motion Network (LDT-NET). Precisely, by endowing a lightweight network structure, i.e., multi-stream Depthwise Separable Convolutional Neural Network, LDT-NET is capable of being employed efficiently on a single CPU/GPU. The experimental results on several famous datasets tested by almost all studies in this field, such as SHREC (i.e., hand actions) and JHMDB (i.e., body actions), the proposed LDT-NET achieves promising performance against the state-of-the-art methods. More promisingly, compared to the latest representative work, such as DD-NET, LDT-NET achieves a speedup both in training and inferring by 25%, with only about 20% of its model parameter. In a nutshell, our method not only achieves higher recognition rate but can be used in practical application comparing to the state-of-the-art methods.

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