Deep Trajectory Based Gait Recognition for Human Re-identification

Thunwa Sattrupai, Worapan Kusakunniran
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引用次数: 10

Abstract

The popular techniques of gait recognition rely on the appearance information, such as Gait Energy Image (GEI). However, they need the pre-processing stage of silhouette segmentation in a walking video. This may not be efficient when the complete silhouette could not be obtained under the cluttered walking environment. It is also sensitive to the changes of walking conditions. Thus, this paper comes up with a new solution using the dense trajectory. This technique is commonly used in the action recognition domain. In this paper, it is used to extract the gait information. The key points and their corresponding trajectories are detected. Then, HOG, HOF, MBHx, MBHy and dense trajectory are extracted from each key point as the point descriptor. In the training phase, the bag of word (BoW) are trained using the extracted point descriptors from the training gait videos. Finally, in the testing phase, the BoW is extracted for each gait video, as the gait feature. The experimental result based on the well-known CASIA gait database B shows the promising performance of the proposed method, under various views.
基于深度轨迹的步态识别用于人体再识别
常用的步态识别技术依赖于外观信息,如步态能量图像(GEI)。然而,它们需要在行走视频中进行轮廓分割的预处理阶段。当在杂乱的行走环境下无法获得完整的轮廓时,这可能不是有效的。它对行走条件的变化也很敏感。因此,本文提出了一种利用密集轨迹的新解。该技术在动作识别领域中得到了广泛的应用。在本文中,它被用于提取步态信息。检测关键点及其相应的轨迹。然后,从每个关键点提取HOG、HOF、MBHx、MBHy和密集轨迹作为点描述符。在训练阶段,使用从训练步态视频中提取的点描述符来训练词袋(BoW)。最后,在测试阶段,提取每个步态视频的BoW,作为步态特征。基于著名的CASIA步态数据库B的实验结果表明,在各种观点下,该方法具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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