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Model-based segmentation and recognition of dynamic gestures in continuous video streams

机译:基于模型的连续视频流中动态手势的分割和识别

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摘要

Segmentation and recognition of continuous gestures are challenging due to spatio-temporal variations and endpoint localization issues. A novel multi-scale Gesture Model is presented here as a set of 3D spatio-temporal surfaces of a time-varying contour. Three approaches, which differ mainly in endpoint localization, are proposed: the first uses a motion detection strategy and multi-scale search to find the endpoints; the second uses Dynamic Time Warping to roughly locate the endpoints before a fine search is carried out; the last approach is based on Dynamic Programming. Experimental results on two arm and single hand gestures show that all three methods achieve high recognition rates, ranging from 88% to 96% for the two arm test, with the last method performing best.
机译:由于时空变化和端点定位问题,连续手势的分割和识别具有挑战性。这里提出了一种新颖的多尺度手势模型,该模型是随时间变化的轮廓的一组3D时空表面。提出了三种主要在端点定位上不同的方法:第一种使用运动检测策略和多尺度搜索来找到端点;第二种方法是在进行精细搜索之前,使用动态时间规整技术大致定位端点;最后一种方法是基于动态编程的。两臂和单手手势的实验结果表明,这三种方法均达到较高的识别率,两臂测试的识别率从88%到96%不等,最后一种方法效果最好。

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