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Face Recognition Framework Based on Correlated Images and Back-Propagation Neural Network

机译:基于相关图像和背部传播神经网络的人脸识别框架

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The human face facial complexity and the face changes make the face recognition system a challenging task to design and difficult to implement. The correlation between the training images which has a high impact on the accuracy of the face recognition system never considered by researchers. In this paper, we presented an enhanced framework to improve the face recognition using the classical conventional Principal Component Analysis (PCA) and the Back-Propagation Neural Network (BPNN). A key contribution of this work is based on obtaining a robust training dataset called the T-Set using the correlation between all the images in the training dataset not based on the image density which adds a distinct layer between the dataset. We used the PCA descriptor for features extraction and dimension reduction to show that there is a promising enhancement even with using traditional algorithms. We combined five distance methods (Correlation, Euclidean, Canberra, Manhattan, and Mahalanobis) to obtain the T-Set using the square-root of the sum of the squares to achieve higher accuracy. We added a strength factor to each of the distance methods, and we achieved higher face recognition accuracy than the current approach. Our experimental results on YALE and ORL datasets demonstrate that the approach we proposed improved the accuracy of face recognition system with respect to the existing methods.
机译:人脸面部复杂性和面部变化使得面部识别系统成为设计且难以实施的具有挑战性的任务。研究人员从未考虑过对面部识别系统的准确性影响的训练图像之间的相关性。在本文中,我们提出了一种增强的框架,以改善使用经典传统主成分分析(PCA)和后传播神经网络(BPNN)的面部识别。这项工作的关键贡献是基于获取使用训练数据集中的所有图像之间的相关性的强大训练数据集,而不是基于在数据集之间添加不同层的图像密度。我们使用PCA描述符进行提取和尺寸减少,表明即使使用传统算法也有希望的增强。我们组合了五种距离方法(相关,欧几里德,堪培拉,曼哈顿和Mahalanobis),以使用正方形之和的平方根获得T-Set以实现更高的精度。我们为每个距离方法添加了强度因素,我们实现了比当前方法更高的面部识别精度。我们对耶鲁和ORL数据集的实验结果表明,我们提出了对现有方法的面部识别系统的准确性。

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