2023
DOI: 10.21203/rs.3.rs-2778787/v1
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Adaptive Temporal Compression for Reduction of Computational Complexity in Human Behavior Recognition

Abstract: The research on video analytics especially in the area of human behavior recognition has become increasingly popular recently. It is widely applied in virtual reality, video surveillance, and video retrieval. With the advancement of deep learning algorithms and computer hardware, the conventional two-dimensional convolution technique for training video models has been replaced by three-dimensional convolution, which enables the extraction of spatio-temporal features. Specifically, the use of 3D convolution in … Show more

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