2018
DOI: 10.4108/eai.16-12-2021.172434
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Residual network based on convolution attention model and feature fusion for dance motion recognition

Abstract: Traditional posture recognition methods have the problems of low accuracy. Therefore, we propose a residual network based on convolution attention model and future fusion for dance motion recognition. Firstly, the fusion features of the relative position, angle and limb length ratio of human body are selected by combining the information of bone key points. The shallow features of the original dance image are extracted and compressed by convolution layer and pooling layer. Then it uses the stacked residual to … Show more

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