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机构地区:[1]集美大学计算机工程学院,福建厦门361021 [2]厦门工学院,福建厦门361021
出 处:《河南农业大学学报》2015年第4期500-504,共5页Journal of Henan Agricultural University
基 金:福建省科技厅高校专项基金项目(JK2012026)
摘 要:比较了PCA(Principal Component Analysis)和2D-PCA(Two-Dimensional Principal Component Analysis)人脸识别算法。在2D-PCA的基础上提出了一种改进算法,即基于整体区域、感兴趣区域与非感兴趣区域的加权分块2D-PCA算法。该算法借助权值的动态调整,最终实现了最优解。基于知名脸库ORL设计实验来验证文中提出的改进的加权分块2D-PCA算法。分析试验结果表明,发现本算法识别率达到97.5%,较PCA算法提高21.66%,较2D-PCA算法提高10.08%,进一步证实本算法较PCA和2D-PCA显著提高了人脸识别的准确率。This paper compares the PCA (Principal Component Analysis) and 2D-PCA (Two-Dimen- sional Principal Component Analysis) face recognition algorithm. On the basis of the 2D-PCA, an im- proved weighted block 2D-PCA algorithm was proposed, which is based on the whole region, the re- gion of interest and other regions. By dynamically adjusting the weights, this algorithm finally achieved the optimal solution. To verify the improved weighted block 2D-PCA algorithm proposed in this paper, experiments based on the well-known face database ORL were designed, and the experimental results show that the proposed algorithm recognition rate reached 97.5% , 21.66% higher than that of PCA algorithm, 10.08% higher than that of 2D-PCA algorithm, which further confirmed that compared with PCA and 2D-PCA, the proposed algorithm significantly improves the accuracy of face recognition.
关 键 词:人脸识别 PCA 2D-PCA 分块PCA 特征矩阵
分 类 号:TP391[自动化与计算机技术—计算机应用技术]
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