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Human gait identity recognition system based on gait pal and pal entropy (GPPE) and distances features fusion

机译:基于步态和pal熵和距离特征融合的人体步态识别系统

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摘要

Gait recognition is one of the most promising modality for human identification in motion and without subject cooperation. This modality of recognition has the objective to identify humans by the manner of walking on foot, even if gait sequences are captured at a distance with low-quality image. A new identity recognition method using gait will be proposed on this paper. The Gait Pal and Pal Entropy (GPPE) image was generated and merged with four proposed distances. The fusion of features based images Gait Pal and Pal Entropy Image (GPPE) and features based distances represent the gait signature in this work. The feed-forward neural network was used for features classification. CASIA-B dataset is used in order to perform the proposed method. A better performance of this method compared to the related work methods has been shown after experimental result in terms of rate accuracy of identification and classification.
机译:步态识别是人类在运动中和没有主题合作的情况下最有前途的识别方法之一。这种识别方式的目的是通过步行的方式识别人,即使步态序列是用低质量的图像在远处捕获的。本文将提出一种新的基于步态的身份识别方法。步态帕尔和帕尔熵(GPPE)图像已生成并与四个建议距离合并。基于特征的图像步态Pal和Pal熵图像(GPPE)与基于特征的距离的融合代表了这项工作中的步态特征。前馈神经网络用于特征分类。为了执行所提出的方法,使用了CASIA-B数据集。实验结果表明,与相关工作方法相比,该方法在识别和分类的速率准确性方面具有更好的性能。

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