Human Action Recognition Using Deep Data: A Fine-Grained Study
- 국제컴퓨터통신보호논문지학회
- International Journal of Computer Science & Network Security
- Vol.22 No.6
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2022.0197 - 108 (12 pages)
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DOI : 10.22937/IJCSNS.2022.22.6.16
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The video-assisted human action recognition [1] field is one of the most active ones in computer vision research. Since the depth data [2] obtained by Kinect cameras has more benefits than traditional RGB data, research on human action detection has recently increased because of the Kinect camera. We conducted a systematic study of strategies for recognizing human activity based on deep data in this article. All methods are grouped into deep map tactics and skeleton tactics. A comparison of some of the more traditional strategies is also covered. We then examined the specifics of different depth behavior databases and provided a straightforward distinction between them. We address the advantages and disadvantages of depth and skeleton-based techniques in this discussion.
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