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Face Illumination Manipulation Using a Single Reference Image by Adaptive Layer Decomposition

机译:通过自适应图层分解使用单个参考图像进行面部照明操作

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This paper proposes a novel image-based framework to manipulate the illumination of human face through adaptive layer decomposition. According to our framework, only a single reference image, without any knowledge of the 3D geometry or material information of the input face, is needed. To transfer the illumination effects of a reference face image to a normal lighting face, we first decompose the lightness layers of the reference and the input images into large-scale and detail layers through weighted least squares (WLS) filter with adaptive smoothing parameters according to the gradient values of the face images. The large-scale layer of the reference image is filtered with the guidance of the input image by guided filter with adaptive smoothing parameters according to the face structures. The relit result is obtained by replacing the largescale layer of the input image with that of the reference image. To normalize the illumination effects of a non-normal lighting face (i.e., face delighting), we introduce similar reflectance prior to the layer decomposition stage by WLS filter, which make the normalized result less affected by the high contrast light and shadow effects of the input face. Through these two procedures, we can change the illumination effects of a non-normal lighting face by first normalizing the illumination and then transferring the illumination of another reference face to it. We acquire convincing relit results of both face relighting and delighting on numerous input and reference face images with various illumination effects and genders. Comparisons with previous papers show that our framework is less affected by geometry differences and can preserve better the identification structure and skin color of the input face.
机译:本文提出了一种新颖的基于图像的框架,通过自适应层分解来操纵人脸的照明。根据我们的框架,仅需要单个参考图像,而无需了解输入面的3D几何形状或材质信息。为了将参考面部图像的照明效果传递到正常的照明面部,我们首先通过具有自适应平滑参数的加权最小二乘(WLS)滤波器将参考图像和输入图像的亮度层分解为大规模和细节层。人脸图像的梯度值。参考图像的大尺度层在输入图像的引导下通过具有根据面部结构的自适应平滑参数的导引滤波器进行滤波。通过将输入图像的大比例图层替换为参考图像的大比例图层,可以获得重新整理结果。为了归一化非正常光照面的照明效果(即,令人愉悦的脸),我们在WLS滤镜的层分解阶段之前引入了相似的反射率,这使得归一化的结果较少受到高对比度光和阴影效应的影响。输入面。通过这两个过程,我们可以通过先对照明进行规范化然后将另一个参考面的照明传递给它来更改非正常照明面的照明效果。我们在具有各种照明效果和性别的大量输入和参考面部图像上获得令人愉悦的面部重新照明和令人愉悦的照明效果。与先前论文的比较表明,我们的框架受几何差异的影响较小,并且可以更好地保留输入面的识别结构和肤色。

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