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Learning to see through reflections

机译:学会透过思考看

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摘要

Pictures of objects behind a glass are difficult to interpret and understand due to the superposition of two real images: a reflection layer and a background layer. Separation of these two layers is challenging due to the ambiguities in assigning texture patterns and the average color in the input image to one of the two layers. In this paper, we propose a novel method to reconstruct these layers given a single input image by explicitly handling the ambiguities of the reconstruction. Our approach combines the ability of neural networks to build image priors on large image regions with an image model that accounts for the brightness ambiguity and saturation. We find that our solution generalizes to real images even in the presence of strong reflections. Extensive quantitative and qualitative experimental evaluations on both real and synthetic data show the benefits of our approach over prior work. Moreover, our proposed neural network is computationally and memory efficient.
机译:由于两个真实图像(反射层和背景层)的叠加,玻璃后的物体图片难以解释和理解。由于在将纹理图案和输入图像中的平均颜色分配给两层之一中的模棱两可方面,将这两层分开是具有挑战性的。在本文中,我们提出了一种新颖的方法,即通过显式处理重构的歧义,在给定单个输入图像的情况下重构这些层。我们的方法结合了神经网络在大图像区域上建立图像先验的能力和考虑亮度模糊度和饱和度的图像模型。我们发现,即使在强烈反射的情况下,我们的解决方案也可以推广到真实图像。对真实和合成数据进行的大量定量和定性实验评估表明,与以前的工作相比,我们的方法具有优势。此外,我们提出的神经网络在计算和存储效率方面都很高。

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