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Single Image Reflection Removal With Physically-Based Training Images

机译:基于物理训练图像的单图像反射去除

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Recently, deep learning-based single image reflection separation methods have been exploited widely. To benefit the learning approach, a large number of training image pairs (i.e., with and without reflections) were synthesized in various ways, yet they are away from a physically-based direction. In this paper, physically based rendering is used for faithfully synthesizing the required training images, and a corresponding network structure and loss term are proposed. We utilize existing RGBD/RGB images to estimate meshes, then physically simulate the light transportation between meshes, glass, and lens with path tracing to synthesize training data, which successfully reproduce the spatially variant anisotropic visual effect of glass reflection. For guiding the separation better, we additionally consider a module, backtrack network (BT-net) for backtracking the reflections, which removes complicated ghosting, attenuation, blurred and defocused effect of glass/lens. This enables obtaining a priori information before having the distortion. The proposed method considering additional a priori information with physically simulated training data is validated with various real reflection images and shows visually pleasant and numerical advantages compared with state-of-the-art techniques.
机译:近来,基于深度学习的单图像反射分离方法已被广泛利用。为了使学习方法受益,以各种方式合成了大量训练图像对(即有反射和无反射),但它们偏离了基于物理的方向。在本文中,基于物理的渲染被用于忠实地合成所需的训练图像,并提出了相应的网络结构和损耗项。我们利用现有的RGBD / RGB图像估计网格,然后通过路径跟踪物理模拟网格,玻璃和透镜之间的光传输,以合成训练数据,从而成功地再现了玻璃反射的空间变异各向异性视觉效果。为了更好地指导分离,我们另外考虑了一个模块,即回溯网络(BT-net),用于回溯反射,从而消除了复杂的重影,衰减,玻璃/镜头散焦和散焦效果。这使得能够在发生失真之前获得先验信息。所提出的考虑了具有物理模拟训练数据的先验信息的方法,已通过各种真实反射图像进行了验证,与最新技术相比,该方法显示出视觉上令人愉悦的数值优势。

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