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Performance improvement for face recognition using PCA and two-dimensional PCA

机译:使用PCA和二维PCA进行面部识别的性能提升

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摘要

Now a days research is going on to design a high performance automatic face recognition system which is really a challenging task for researchers. As faces are complex visual stimuli that differ dramatically, hence developing an efficient computational approach for accurate face recognition is very difficult. In this paper a high performance face recognition algorithm is developed and tested using conventional Principal Component Analysis (PCA) and two dimensional Principal Component Analysis (2DPCA). These statistical transforms are exploited for feature extraction and data reduction. We have proposed here to assign different weight to the only very few nonzero eigenvalues related eigenvectors which are considered as non-trivial principal components for classification. Lastly face recognition task is performed by k-nearest distance measurement. Experimental results on ORL and YALE face databases show that the proposed method improves the performance of face recognition with respect to existing techniques. The results show that better recognition performance can be achieved with less computational cost than that of other existing methods.
机译:如今,正在进行一项研究以设计高性能的自动面部识别系统,这对于研究人员而言确实是一项艰巨的任务。由于面部是复杂的视觉刺激,差异很大,因此开发一种有效的计算方法来精确识别面部非常困难。在本文中,使用常规的主成分分析(PCA)和二维主成分分析(2DPCA)开发并测试了高性能的面部识别算法。这些统计转换可用于特征提取和数据精简。我们在这里提出了将不同的权重分配给与特征向量相关的仅有极少数非零特征值的特征向量,这些特征向量被视为分类的非平凡主成分。最后,通过k最近距离测量来执行面部识别任务。在ORL和YALE人脸数据库上的实验结果表明,相对于现有技术,该方法提高了人脸识别的性能。结果表明,与其他现有方法相比,可以用更少的计算成本获得更好的识别性能。

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