Gait recognition based on active energy image and parameter-adaptive kernel PCA
In this paper, we used gait silhouettes that provided by CASIA, and all we study are based on this database. Firstly, we normalized and centralized gait silhouettes and get the gait sequence, secondly, we extract the active regions by calculating the difference of two adjacent silhouettes images, and construct an AEI by accumulating these active regions, finally, using Kernel Principal Component Analysis (KPCA) method to analysis the AEI, and parameter optimization method used to determine the nuclear function of KPCA, and using SVM to classified and recognized gait. Experimental results show that such methods to be identified effective.
KPCA PCA AEI SVM Eigenvector
Qi Yang Kuisheng Qiu
School of Mechanical Engineering Shenyang Ligong University Shenyang,China The first design department Shenyang Gas & Heat Research and Design institute of Construction Minist
国际会议
重庆
英文
156-159
2011-08-20(万方平台首次上网日期,不代表论文的发表时间)