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Bidimensional empirical mode decomposition-based unlighting for face recognition

机译:基于二维经验模式分解的人脸识别不足

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A face recognition system must be capable of handling facial data with head pose variations or different illumination conditions. However, as these conditions are uncontrolled the requirement of better algorithms has become essential. We propose a Bidimensional Empirical Mode Decomposition-based unlighting method that preprocesses the luminance and the reflectance parts of an image. First, three luminance components are estimated using Bidimensional Intrinsic Mode Functions residuals. Second, a shadow removal procedure using recursive Retinex is applied. Third, the reflectance part is denoised using mean-Gaussian filters. After that, a new image is created multiplying each shadow-free luminance by the reflectance. The final output is obtained using the geometric mean on the newly acquired images. This algorithm has been tested in two 3D- 2D face recognition databases: UHDB11 and FRGCv2.0. The performance of BEMDU demonstrates an improvement of up to 15.42% when compared with the AELM, LBEMD, PittPatt, the baseline, and EA algorithms.
机译:人脸识别系统必须能够处理具有头部姿势变化或不同照明条件的人脸数据。但是,由于这些条件不受控制,因此对更好的算法的要求变得至关重要。我们提出了一种基于二维经验模式分解的消光方法,该方法可以对图像的亮度和反射率部分进行预处理。首先,使用二维固有模式函数残差估算三个亮度分量。其次,应用使用递归Retinex的阴影去除过程。第三,使用平均高斯滤波器对反射率部分进行去噪。之后,创建一个新图像,将每个无阴影的亮度乘以反射率。使用新获取的图像上的几何平均值获得最终输出。该算法已经在两个3D-2D人脸识别数据库中进行了测试:UHDB11和FRGCv2.0。与AELM,LBEMD,PittPatt,基准线和EA算法相比,BEMDU的性能提高了15.42%。

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