International Conference on Electronic Information Engineering and Computer Science (EIECS 2022) 2023
DOI: 10.1117/12.2668182
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Fall detection algorithm based on lightweight 3D residual network

Abstract: Aiming at the many parameters and high computational complexity of video-based deep learning fall detection models, we propose a lightweight fall detection algorithm for 3D residual networks. In this approach, we design a low-rank depthseparable convolution structure. When performing deep convolution, the 3-dimensional parameter matrix is decomposed into 1-dimensional and 2-dimensional parameter matrices to reduce the model parameters and thus improve the performance. Meanwhile, the dataset is built by referri… Show more

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