基于截断奇异值分解变换模型的无阴影轮廓人体步态识别系统

Rohit Katiyar, V. Pathak, K. V. Arya
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引用次数: 5

摘要

当前,生物识别系统日益普及,生物识别系统根据主体的合作性和非合作性进行分类。步态生物识别技术是一种常用的人脸识别技术。与其他生物特征相比,步态生物特征具有优势,因为即使受试者不合作,步态生物特征也能很好地工作。由于监控摄像机的存在,在视觉监控中会遇到阴影检测、运动主体的移除、不同条件下的通道探头数量较少、数据中存在多视图等问题,影响步态识别系统的性能。在本文中,我们使用了三种算法在一定程度上克服了这些问题。在第一种算法中,采用基于光度特性的方法去除录制视频中轮廓生成时的阴影;然后,采用合成步态能量图像(GEI)模板生成算法增加相应的画廊探针数据集,最后采用奇异值分解变换将步态特征从一种视图转换为另一种视图。通过与现有算法的比较,在室内和室外视频序列的基准数据集上验证了该算法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human gait recognition system based on shadow free silhouettes using truncated singular value decomposition transformation model
In present scenario biometrics system are getting popular day by day and they are classified based on subject's cooperation and non-cooperation nature. Gait biometrics is one of the popularly traits used for person identification. The gait biometrics has an edge over the other biometrics traits as it works well even if the subject is not cooperative. The multiple problems such as shadow detection, removal of moving subjects in visual surveillance, less number of gallery probes in different conditions and existence of multiple views in the data are encountered due to surveillance camera and affect the performance of the gait recognition system. In this paper, we used three algorithms to overcome these problems up to an extent. In first algorithm, photometric properties based method is used to remove shadows at the time of silhouette generation from the recorded video. Then, an algorithm for synthetic gait energy image (GEI) templates generation employed to increase the corresponding gallery probes dataset and finally, singular value decomposition transformation is applied to transform the gait feature from one view to another. The performance of the proposed algorithm is experimentally validated on a benchmark dataset of indoor as well as outdoor video sequences by comparing it with the existing algorithms.
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