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A Theoretical Approach on Face Recognition with Single Sample Per Class using CS-LBP and Gabor Magnitude and Phase

机译:基于CS-LBP和Gabor幅值和相位的每类单个样本人脸识别的理论方法

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Objectives: To develop a theoretical model in order to understand how to recognize acquainted faces and the relationship between face processing acknowledgement with other aspects in face. Greater Performance is achieved in face recognition by local appearance based methods. Methods: The Centre Symmetric local binary pattern with gabor magnitude phase have been proposed in this paper to provide an expression, illumination and pose invariant in a single sample problem for face recognition approach with local spatial, scale and directional discriminate and low dimensional face representation based on features. The proposed methodology was compared with PCA and LBP. Findings: Gabor magnitude and Gabor phase tracks the texture boundaries of textured regions accurately. The evaluated Face features from CS-LBP and gabor magnitude phase has better performance. The Photometric descriptors are used in recent years, proven successful for computing regions which are in interest. In this approach the strength of SIFT descriptors are used in combination with LBP texture operator collectively called CS-LBP descriptor. This nullified illumination changes, strengthening flat image areas, and proficiency in computation. Improvements: For images with severe illumination variations SIFT descriptor is outperformed by CSLBP descriptor this was proved experimentally. The face recognition rate is increased by selective local texture feature Gabor Magnitude and Phase CS-LBP when compared with LBP method and Gabor filter.
机译:目的:建立一个理论模型,以了解如何识别相识的面部以及面部处理确认与面部其他方面之间的关系。通过基于局部外观的方法在面部识别中获得更高的性能。方法:本文提出了具有gabor量级相位的中心对称局部二值模式,为基于局部空间,比例和方向辨别和低维人脸识别的人脸识别方法提供了一个样本问题的表达,光照和姿态不变性在功能上。将所提出的方法与PCA和LBP进行了比较。发现:Gabor幅度和Gabor相位准确地跟踪纹理区域的纹理边界。从CS-LBP和gabor幅值相位评估的人脸特征具有更好的性能。近年来,使用了光度学描述符,事实证明该算法可成功用于计算感兴趣的区域。在这种方法中,将SIFT描述符的强度与LBP纹理运算符(统称为CS-LBP描述符)结合使用。这样就消除了照明变化,增强了平面图像区域,并提高了计算能力。改进:对于光照变化严重的图像,SIFT描述符的性能优于CSLBP描述符,这已通过实验证明。与LBP方法和Gabor滤波器相比,面部局部识别率通过选择性局部纹理特征Gabor幅值和相位CS-LBP得以提高。

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