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Scheming an efficient facial recognition system using global and random local feature extraction methods

机译:使用全局和随机局部特征提取方法设计有效的面部识别系统

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摘要

Face recognition is considered as one of the relatively new and interesting concepts in the area of biometrics and comprises a huge number of applications. This study involves implementation of a robust recognition system by employing global and random local facial features of an individual. The proposed scheme considers the extraction of global facial features and some randomly selected local facial features. In order to exploit global information of a whole face image, Principal Component Analysis (PCA) algorithm is used. On the other hand, the randomly selected sub-images of a whole face image are concatenated and subsequently PCA is applied on the concatenated regions. In addition, the proposed scheme involves the optimization of random sub-image locations and sizes by considering different settings and choosing the most optimized one. Finally, Weighted Sum Rule fusion is employed to combine the calculated scores of the global and local feature extractors. The reliability of the proposed facial recognition system is investigated on several data sets of ORL, FERET, and Extended Yale face databases. Demonstration of results based on the recognition performance and ROC analysis clarifies that the proposed scheme achieves a considerable improvement compared to the global and local feature extractors implemented in this study.
机译:人脸识别被认为是生物识别领域中一个相对较新且有趣的概念,并且涉及大量应用。这项研究涉及通过采用个体的全局和随机局部面部特征来实现鲁棒的识别系统。提出的方案考虑了全局面部特征和一些随机选择的局部面部特征的提取。为了利用全脸图像的全局信息,使用了主成分分析(PCA)算法。另一方面,将整个面部图像的随机选择的子图像级联,然后将PCA应用于级联区域。另外,提出的方案涉及通过考虑不同的设置并选择最优化的设置来优化随机子图像的位置和大小。最后,采用加权和规则融合来组合全局和局部特征提取器的计算得分。在ORL,FERET和Extended Yale人脸数据库的多个数据集上研究了提出的人脸识别系统的可靠性。基于识别性能和ROC分析的结果表明,与本研究中实现的全局和局部特征提取器相比,该方案实现了相当大的改进。

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