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Unrolled Optimization with Deep Priors for Intrinsic Image Decomposition

机译:深度先验展开的内在图像分解优化

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Intrinsic image decomposition is a challenging task, which aims at separating an image into reflectance and shading layers. Traditionally, strong hand-crafted priors such as reflectance sparsity, shading smoothness and depth information, have been used to solve this long-standing ill-posed problem including two variables. Recent researches lay emphasis on the deep neural networks which need to be specific design. To overcome these limitations, we develop a novel unrolled optimization model for intrinsic image decomposition, which incorporate deep priors from the optimization perspective in a more skillful way, rather than directly design the specific network or introduce hand-crafted and human annotation priors. Extensive experimental results illustrate the excellent performance of our method compared with other state-of-the-art methods and we successfully carry out the proposed algorithm for the application based on image decomposition (e.g. low-light image enhancement).
机译:固有图像分解是一项艰巨的任务,其目的是将图像分为反射层和阴影层。传统上,诸如反射率稀疏性,阴影平滑度和深度信息之类的强大手工先验技术已被用来解决这个长期存在的不适定问题,其中包括两个变量。最近的研究重点在于需要进行特定设计的深度神经网络。为了克服这些限制,我们开发了一种用于内部图像分解的新颖展开式优化模型,该模型以更熟练的方式从优化角度整合了深层先验,而不是直接设计特定网络或引入手工和人工注释先验。大量的实验结果表明,与其他最新技术相比,我们的方法具有出色的性能,并且我们成功地针对图像分解(例如弱光图像增强)成功地实施了所提出的算法。

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