基于贪婪相似度度量的视频序列手势分割

Qiulei Dong, Yihong Wu, Zhanyi Hu
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引用次数: 8

摘要

提出了一种新的贪婪相似度度量方法来分割长时空视频序列。首先,构造运动区域沿视频序列帧的主曲线来表示运动轨迹;然后从构造的预定义手势轨迹主曲线出发,应用hmm模型对其进行建模。针对长输入视频序列,建立贪婪相似度度量,将其自动分割为手势并进行手势识别,其中通过最大化基于hmm获得的手势模型的两个连续候选片段的联合概率来找到其主曲线的真正断点。该方法利用主曲线,结合两个连续候选段,同时识别,具有灵活、精度高、抗噪能力强等特点。通过与两种已有方法的对比实验,验证了该方法的有效性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gesture Segmentation from a Video Sequence Using Greedy Similarity Measure
We propose a novel method of greedy similarity measure to segment long spatial-temporal video sequences. Firstly, a principal curve of motion region along frames of a video sequence is constructed to represent trajectory. Then from the constructed principal curves of trajectories of predefined gestures, HMMs are applied to modeling them. For a long input video sequence, greedy similarity measure is established to automatically segment it into gestures along with gesture recognition, where true breakpoints of its principal curve are found by maximizing the joint probability of two successive candidate segments conditioned on the gesture models obtained from HMMs. The method is flexible, of high accuracy, and robust to noise due to the exploitation of principal curves, the combination of two successive candidate segments, and the simultaneous recognition. Experiments including comparison with two established methods demonstrate the effectiveness of the proposed method
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