Hand Gesture Segmentation in Uncontrolled Environments with Partition Matrix and a Spotting Scheme Based on Hidden Conditional Random Fields

Yi Yao, Chang-Tsun Li
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引用次数: 2

Abstract

Hand gesture segmentation is the task of interpreting and spotting meaningful hand gestures from continuous hand gesture sequences with non-sign transitional hand movements. In real world scenarios, challenges from the unconstrained environments can largely affect the performance of gesture segmentation. In this paper, we propose a gesture spotting scheme which can detect and monitor all eligible hand candidates in the scene, and evaluate their movement trajectories with a novel method called Partition Matrix based on Hidden Conditional Random Fields. Our experimental results demonstrate that the proposed method can spot meaningful hand gestures from continuous gesture stream with 2-4 people randomly moving around in an uncontrolled background.
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基于分割矩阵和隐条件随机场的非受控环境下手势分割
手势分割是从连续的手势序列中识别有意义的手势。在现实场景中,来自无约束环境的挑战会在很大程度上影响手势分割的性能。在本文中,我们提出了一种手势识别方案,该方案可以检测和监控场景中所有符合条件的候选手势,并使用一种新的基于隐藏条件随机场的划分矩阵方法来评估它们的运动轨迹。实验结果表明,该方法可以从2-4人随机移动的连续手势流中识别出有意义的手势。
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