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Featureweighting in dynamic timewarping for gesture recognition in depth data

机译:动态时间扭曲中的特征加权,用于深度数据中的手势识别

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摘要

We present a gesture recognition approach for depth video data based on a novel Feature Weighting approach within the Dynamic Time Warping framework. Depth features from human joints are compared through video sequences using Dynamic Time Warping, and weights are assigned to features based on inter-intra class gesture variability. Feature Weighting in Dynamic Time Warping is then applied for recognizing begin-end of gestures in data sequences. The obtained results recognizing several gestures in depth data show high performance compared with classical Dynamic Time Warping approach.
机译:我们基于动态时间规整框架内的一种新颖的特征加权方法,提出了一种用于深度视频数据的手势识别方法。使用动态时间规整,通过视频序列比较人体关节的深度特征,并基于类间手势姿势将权重分配给特征。然后将动态时间规整中的特征权重应用于识别数据序列中手势的开始-结束。与传统的动态时间规整方法相比,识别深度数据中多个手势的结果显示出较高的性能。

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