Human action recognition in the fractional Fourier domain

Jia-xin Cai, G. F. Sun
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引用次数: 4

Abstract

Most studies about silhouettes based human action recognition focus on the time domain representation. However, the contour of human body usually shows as a time-varying signal, for which neither the time domain based methods nor the Fourier transform can catch enough information to achieve sufficient classification performance. A fractional Fourier shape descriptor is proposed for silhouette based human pose representation and action recognition. The fractional Fourier shape representation of human silhouette is more robust and discriminative than that in the time or frequency domain. A criteria called diffusion score is proposed to determine the best fractional order. After the fractional shape features are built, we propose a two-stage random forest based framework to classify human poses in the action sequence and vote the action label. Experimental results on benchmark dataset show that our method is effective.
分数傅里叶域的人体动作识别
基于轮廓的人体动作识别研究大多集中在时域表征上。然而,人体轮廓通常表现为一个时变信号,无论是基于时域的方法还是傅里叶变换都无法捕获足够的信息以达到足够的分类效果。提出了一种分数阶傅立叶形状描述子,用于基于轮廓的人体姿态表示和动作识别。人体轮廓的分数阶傅里叶形状表示比时域和频域的表示具有更强的鲁棒性和判别性。提出了一种称为扩散分数的准则来确定最佳分数阶。在构建分数形状特征后,我们提出了一种基于两阶段随机森林的框架来对动作序列中的人体姿势进行分类并对动作标签进行投票。在基准数据集上的实验结果表明,该方法是有效的。
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