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Deep Learning for Face Recognition under Complex Illumination Conditions Based on Log-Gabor and LBP

机译:基于Log-Gabor和LBP的复杂照明条件下的人脸识别深度学习

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摘要

Complex illumination condition is one of the most critical challenging problems for practical face recognition. In this paper, we propose a novel method based on deep learning to solve the adverse impact imposed by illumination variation in the face recognition process. Firstly, illumination preprocessing is applied to improve the adverse effects of intense illumination changes on face images. Secondly, the Log-Gabor filter is used to obtain the Log-Gabor feature images of different scales and directions, then, LBP (Local Binary Pattern) features of images subblock is extracted. Lastly, texture feature histograms are formed and input into the deep belief network (DBN) visual layer, then face classification and recognition are completed through deep learning in DBN. Experimental results show that superior performance can be obtained in the developed approach by comparisons with some state-of-the-arts.
机译:复杂的照明条件是实际人脸识别中最关键的挑战性问题之一。在本文中,我们提出了一种基于深度学习的新方法,以解决面部识别过程中光照变化带来的不利影响。首先,应用光照预处理来改善强烈的光照变化对面部图像的不利影响。其次,利用Log-Gabor滤波器获取不同尺度和方向的Log-Gabor特征图像,然后提取图像子块的LBP(Local Binary Pattern)特征。最后,形成纹理特征直方图并将其输入到深度信念网络(DBN)可视层中,然后通过在DBN中进行深度学习来完成人脸分类和识别。实验结果表明,通过与某些最新技术进行比较,可以在开发的方法中获得出色的性能。

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