Dynamic time warping for off-line recognition of a small gesture vocabulary

A. Corradini
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引用次数: 192

Abstract

We focus on the visual sensory information to recognize human activity in form of hand-arm movements from a small, predefined vocabulary. We accomplish this task by means of a matching technique by determining the distance between the unknown input and a set of previously defined templates. A dynamic time warping algorithm is used to perform the time alignment and normalization by computing a temporal transformation allowing the two signals to be matched. The system is trained with finite video sequences of single gesture performances whose start and end-point are accurately known. Preliminary experiments are accomplished off-line and result in a recognition accuracy of up to 92%.
用于离线识别小手势词汇的动态时间扭曲
我们专注于视觉感官信息,从一个小的,预定义的词汇表中识别手部运动形式的人类活动。我们通过确定未知输入与一组先前定义的模板之间的距离来匹配技术来完成这项任务。动态时间规整算法通过计算时间变换使两个信号匹配,从而实现时间对齐和归一化。该系统使用有限的单手势表演视频序列进行训练,这些视频序列的起点和终点都是精确已知的。初步实验在离线状态下完成,识别准确率高达92%。
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