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Fusion of Random Walk and Discrete Fourier Spectrum Methods for Gait Recognition

机译:步行与离散傅里叶频谱方法的融合用于步态识别

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摘要

Gait-based person identification suffers from the problem of different covariate factors such as clothing and carrying objects, which drastically reduce the recognition rate. Most existing methods capture dynamic and static information and remove the covariate factors without any systematic study. However, it has been reported in the literature that the head is one of the important features and the removal of the head from static information decreases the recognition rate. In our preliminary study, we developed a novel random walk (RW)-based gait extraction method that retains the head portion and removes certain static body parts to reduce the effect of covariate factors. The RW-based method is a novel gait feature extraction method and should be exploited more for its discriminative power to separate different body parts efficiently. However, the dynamic part is also significant in gait information, which is not very effectively represented in the RW-based gait extraction method. Therefore, a discrete Fourier transform (DFT)-based frequency component of the gait is considered to represent the dynamic part of gait information. Furthermore, we propose a novel gait recognition algorithm that fuses dynamic and static information from DFTand RW-based representations. The proposed method systematically retains the discriminative static gait information along with the frequency attribute embedded as the dynamic gait information. Extensive experiments on the Chinese Academy of Sciences, Institute of Automation and the HumanID datasets have been carried out to demonstrate that the proposed fused gait features-based approach outperforms the existing methods, particularly when there are substantial appearance changes.
机译:基于步态的人识别受到诸如衣服和携带物品等不同协变量因素的困扰,这极大地降低了识别率。多数现有方法无需任何系统研究即可捕获动态和静态信息并消除协变量因素。但是,据文献报道,头部是重要的特征之一,从静态信息中去除头部会降低识别率。在我们的初步研究中,我们开发了一种基于随机行走(RW)的新型步态提取方法,该方法可保留头部并去除某些静态身体部位,以减少协变量因子的影响。基于RW的方法是一种新颖的步态特征提取方法,应具有更多的判别能力,可以有效地分离出不同的身体部位,因此应进一步加以利用。但是,动态部分在步态信息中也很重要,在基于RW的步态提取方法中不能很好地表示出来。因此,步态的基于离散傅里叶变换(DFT)的频率分量被认为代表了步态信息的动态部分。此外,我们提出了一种新颖的步态识别算法,该算法融合了基于DFT和RW的表示形式的动态和静态信息。所提出的方法系统地保留了判别式静态步态信息以及作为动态步态信息嵌入的频率属性。已经在中国科学院自动化研究所和HumanID数据集上进行了广泛的实验,以证明所提出的基于融合步态特征的方法优于现有方法,特别是在外观发生重大变化时。

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