径向正交中值LBP (ROM-LBP):用于人脸识别的光变化判别局部描述子

Shekhar Karanwal, M. Diwakar
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引用次数: 0

摘要

LBP及其大多数变体在中等光照变化前表现非常好。但当光变化变得严重时,LBP及其变体的性能就不令人满意。因此,需要更有前途和令人印象深刻的描述符,它在强光变化中表现良好。为了补充这些基于LBP的描述符,本文提出了一种新的描述符,用于恶劣闪电变化的人脸识别(FR)。这个描述符被称为径向正交中值LBP (ROM-LBP)。这些基于LBP的描述符的主要缺点是它们都考虑了相邻像素和中心像素之间的均匀协调。其中平均原始像素强度用于与中心像素的比较。本文提出的工作消除了描述符ROM-LBP中引入的这个问题,通过用两个独立组的每个正交位置的径向点的中位数替换原始像素强度。然后使用生成的中位数与中心像素进行比较。将从两组中获得的相应代码连接起来形成ROM-LBP大小。由于进行了区域特征提取,ROM-LBP具有较大的特征尺寸。为了获得更有效的描述符,首先利用FLDA服务,然后利用支持向量机进行分类。在EYB和YB数据集上进行的实验证明了所提出的ROM-LBP对各种基于LBP和非LBP的描述符的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Radial Orthogonal Median LBP (ROM-LBP): A Discriminant Local Descriptor in Light Variations for Face Recognition
LBP and majority of its variants performs extremely well in front of moderate light variations. But when light variations becomes severe then performance of LBP and its variants is not satisfactory. Therefore there is a need of the more promising and impressive descriptor which performs well in harsh light variations. To complement these LBP based descriptors the proposed work launches the novel descriptor for Face Recognition (FR) in harsh lightning variations. This proposed descriptor is called as Radial Orthogonal Median LBP (ROM-LBP). The main demerit of these LBP based descriptors is that they all consider the uniform coordination between the neighbors and center pixel. Which mean raw pixel intensity is used for the comparison with the center pixel. The proposed work eliminates this problem in the introduced descriptor ROM-LBP, by replacing the raw pixels intensity with the median of the radial points in each orthogonal position of the two separate groups. The generated median is then used for comparison with the center pixel. The respective codes obtained from both the groups are concatenated to form the ROM-LBP size. As region feature extraction is done therefore ROM-LBP develops the large feature size. To make more effective descriptor, the services of FLDA is used and then classification was conducted by SVMs. Experiments conducted on EYB and YB datasets demonstrates the ability of the proposed ROM-LBP against various LBP and non-LBP based descriptors.
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