负空间分析的人类行为识别

Shah Atiqur Rahman, Liyuan Li, M. Leung
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引用次数: 7

摘要

我们提出了一种新的基于区域的方法,通过分析人体周围的区域来识别人类的行为,根据艺术理论,这被称为负空间,而其他基于区域的方法则与人体的轮廓有关。我们发现负空间提供了足够的信息来描述每个姿势。它还可以克服基于轮廓的方法的一些局限性,例如轮廓中的泄漏或孔。每个负空间都可以用简单的形状近似表示,从而产生计算成本低廉的特征描述,支持快速准确的动作识别。该系统在Weizmann人体动作数据集上获得了100%的准确率,并且在动作的部分遮挡、阴影、噪声分割和非刚性变形方面比其他方法具有更强的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Action Recognition by Negative Space Analysis
we propose a novel region-based method to recognize human actions by analyzing regions surrounding the human body, termed as negative space according to art theory, whereas other region-based approaches work with silhouette of the human body. We find that negative space provides sufficient information to describe each pose. It can also overcome some limitations of silhouette based methods such as leaks or holes in the silhouette. Each negative space can be approximately represented by simple shapes, resulting in computationally inexpensive feature description that supports fast and accurate action recognition. The proposed system has obtained 100% accuracy on the Weizmann human action dataset and is found more robust with respect to partial occlusion, shadow, noisy segmentation and non-rigid deformation of actions than other methods.
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