A Novel Color Correction Framework for Facial Images

Jinling Niu, Changbo Zhao, Guozheng Li
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引用次数: 3

Abstract

The color images produced by digital cameras are usually not in conformity with their inherent colors. This will seriously impact computer-aided facial image analysis because it is on the basis of accurate rendering of color information. To solve that, we propose a novel color correction framework. Firstly, we utilize 122 undistorted facial images to demarcate complexion gamut. Secondly, several training sets based on complexion gamut are compared experimentally for the selection of optimal training samples. Thirdly, we select an adaptive target device-independent color space for our facial images color correction task. Finally, we evaluate the performance of three most popular color correction algorithms in color science area, and select the most suitable one to build our final regression model. Compared with the previous work, our color correction framework is characterized by mission dependence and statistical reliability. Besides, its trained model has low complexity and high accuracy. All of these features make it effective for facial images color correction.
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一种新的人脸图像色彩校正框架
数码相机所产生的彩色图像往往与其固有的颜色不一致。这将严重影响计算机辅助面部图像分析,因为它是建立在准确渲染颜色信息的基础上的。为了解决这个问题,我们提出了一种新的色彩校正框架。首先,利用122张未失真的人脸图像进行色域划分。其次,对几种基于色域的训练集进行实验比较,选择最优训练样本;第三,我们选择了一个自适应的目标设备无关的颜色空间用于人脸图像的颜色校正任务。最后,我们评估了色彩科学领域最流行的三种色彩校正算法的性能,并选择了最合适的一种来构建最终的回归模型。与以往的工作相比,我们的色彩校正框架具有任务依赖性和统计可靠性。该方法训练的模型具有复杂度低、准确率高的特点。所有这些特点使其有效的面部图像色彩校正。
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