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A High Precision Feature Based on LBP and Gabor Theory for Face Recognition

机译:基于LBP和Gabor理论的人脸识别高精度特征

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摘要

How to describe an image accurately with the most useful information but at the same time the least useless information is a basic problem in the recognition field. In this paper, a novel and high precision feature called BG2D2LRP is proposed, accompanied with a corresponding face recognition system. The feature contains both static texture differences and dynamic contour trends. It is based on Gabor and LBP theory, operated by various kinds of transformations such as block, second derivative, direct orientation, layer and finally fusion in a particular way. Seven well-known face databases such as FRGC, AR, FERET and so on are used to evaluate the veracity and robustness of the proposed feature. A maximum improvement of 29.41% is achieved comparing with other methods. Besides, the ROC curve provides a satisfactory figure. Those experimental results strongly demonstrate the feasibility and superiority of the new feature and method.
机译:如何用最有用的信息准确地描述图像,同时又使最有用的信息最少,是识别领域的基本问题。在本文中,提出了一种称为BG2D2LRP的新颖且高精度的功能,并带有相应的人脸识别系统。该功能包含静态纹理差异和动态轮廓趋势。它基于Gabor和LBP理论,通过各种转换操作,例如嵌段,二阶导数,直接取向,分层以及最终以特定方式融合。七个知名的人脸数据库,例如FRGC,AR,FERET等,用于评估所提出特征的准确性和鲁棒性。与其他方法相比,可最大提高29.41%。此外,ROC曲线提供了令人满意的数字。这些实验结果充分证明了该新功能和新方法的可行性和优越性。

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