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Illumination Normalization of Face Image Based on Illuminant Direction Estimation and Improved Retinex

机译:基于照明方向估计和改进Retinex的人脸图像照明归一化

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摘要

Illumination normalization of face image for face recognition and facial expression recognition is one of the most frequent and difficult problems in image processing. In order to obtain a face image with normal illumination, our method firstly divides the input face image into sixteen local regions and calculates the edge level percentage in each of them. Secondly, three local regions, which meet the requirements of lower complexity and larger average gray value, are selected to calculate the final illuminant direction according to the error function between the measured intensity and the calculated intensity, and the constraint function for an infinite light source model. After knowing the final illuminant direction of the input face image, the Retinex algorithm is improved from two aspects: (1) we optimize the surround function; (2) we intercept the values in both ends of histogram of face image, determine the range of gray levels, and stretch the range of gray levels into the dynamic range of display device. Finally, we achieve illumination normalization and get the final face image. Unlike previous illumination normalization approaches, the method proposed in this paper does not require any training step or any knowledge of 3D face and reflective surface model. The experimental results using extended Yale face database B and CMU-PIE show that our method achieves better normalization effect comparing with the existing techniques.
机译:用于面部识别和面部表情识别的面部图像的照度归一化是图像处理中最常见和最困难的问题之一。为了获得具有正常照明的脸部图像,我们的方法首先将输入的脸部图像划分为十六个局部区域,并计算每个区域的边缘水平百分比。其次,根据测量强度与计算强度之间的误差函数和无限光源的约束函数,选择满足较低复杂度和较大平均灰度值要求的三个局部区域,计算最终光源方向。模型。在知道输入人脸图像的最终光源方向之后,从两个方面对Retinex算法进行了改进:(1)优化环绕功能; (2)我们截取人脸图像直方图两端的值,确定灰度范围,并将灰度范围扩展到显示设备的动态范围。最后,我们实现照明归一化并获得最终的人脸图像。与以前的照明标准化方法不同,本文提出的方法不需要任何训练步骤或3D面部和反射表面模型的任何知识。使用扩展的耶鲁人脸数据库B和CMU-PIE进行的实验结果表明,与现有技术相比,该方法具有更好的归一化效果。

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