基于分段的辅助因素检测与消除的有效步态识别

Abdul Matin, J. Paul, Taufique Sayeed
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引用次数: 2

摘要

步态是计算机视觉领域中一种重要的生理生物特征,用于远距离人体身份验证。在基于外观的步态识别系统中,重要的步态特征可能受到各种辅助因素(如衣服或携带物体)的影响。因此,在不丢失步态能量图像特征的前提下,检测出辅因子片段并消除辅因子信息是实现步态识别的主要问题之一。在本文中,我们提出了一种检测辅助因子影响GEI片段的方法和一种动态重建辅助因子GEI的方法,以获得更准确的步态识别。首先考虑辅因子出现的面积,将整个GEI分割为三个部分。此外,根据一些预定义的阈值检测和消除辅助因子信息。最后,对三个片段进行重组,进行最终分类。本文使用CASIA步态数据库作为训练数据和测试数据。结果表明,该方法的准确率达到85.04%,比其他传统的步态识别方法更加方便。
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Segment based co-factor detection and elimination for effective gait recognition
Gait is an important physiological biometric in the area of computer vision for human authentication at a distance. In appearance-based gait recognition system, significant gait features could be affected by various cofactors such as cloths or carrying objects. Therefore, detecting co-factored segments and eliminating co-factored information without losing the features of Gait Energy Image (GEI) is one of the major concerns for appropriate gait recognition. In this paper, we proposed a method for detecting cofactor affected segments of GEI and an approach for dynamic reconstruction of co-factored GEI for more accurate gait recognition. The whole GEI is first segmented into three parts considering the area of cofactor appearance in it. Moreover, co-factored information are detected and eliminated depending on some predefined threshold values. Finally, the three segments are recombined for final classification. The CASIA gait database is used here as a training and a test data. The result shows better performance with 85.04% accuracy which is more convenient than other conventional gait recognition methods.
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