Dance somersault gesture recognition based on multi-scale depth feature fusion

Lusi Huang
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Abstract

In order to explore the problem of dance somersault gesture recognition, a kind of dance somersault gesture recognition based on multi-scale depth feature fusion is proposed. Methods Through the information recommendation of key technical problems and solutions based on multi-scale depth feature fusion, the research of dance somersault gesture recognition was explored. The research shows that the efficiency of dance somersault gesture recognition based on multi-scale depth feature fusion is about 4.6% higher than that of traditional methods. The acquisition of main video information has always been inclined to obtain video key frames. However, in the face of videos with strong continuity and low repetition between human posture sequences in various movements, only key frames can't represent all the effective information of the videos. Most algorithms excessively pursue the differences between action categories, thus ignoring the degree of "cohesion" between simple actions within actions.
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基于多尺度深度特征融合的舞蹈空翻手势识别
为了探索舞蹈空翻手势识别问题,提出了一种基于多尺度深度特征融合的舞蹈空翻手势识别方法。方法通过对基于多尺度深度特征融合的关键技术问题及解决方案的信息推荐,对舞蹈空翻手势识别进行研究。研究表明,基于多尺度深度特征融合的舞蹈翻筋斗手势识别效率比传统方法提高约4.6%。视频主要信息的获取一直倾向于获取视频关键帧。然而,面对各种动作中人体姿态序列之间连续性强、重复度低的视频,仅关键帧并不能代表视频的全部有效信息。大多数算法过分追求动作类别之间的差异,从而忽略了动作中简单动作之间的“内聚”程度。
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