Most existing methods usually formulate the non-blind deconvolution problem into a maximum-a-posteriori framework and address it by manually designing kinds of regularization terms and data terms of the latent clear images. However, explicitly designing these two terms is quite challenging and usually leads to complex optimization problems which are difficult to solve. In this paper, we propose an effective non-blind deconvolution approach by learning discriminative shrinkage functions to implicitly model these terms. In contrast to most existing methods that use deep convolutional neural networks (CNNs) or radial basis functions to simply learn the regularization term, we formulate both the data term and regularization term and split the deconvolution model into data-related and regularization-related sub-problems according to the alternating direction method of multipliers. We explore the properties of the Maxout function and develop a deep CNN model with a Maxout layer to learn discriminative shrinkage functions to directly approximate the solutions of these two sub-problems. Moreover, given the fast-Fourier-transform-based image restoration usually leads to ringing artifacts while conjugate-gradient-based approach is time-consuming, we develop the Conjugate Gradient Network to restore the latent clear images effectively and efficiently. Experimental results show that the proposed method performs favorably against the state-of-the-art ones in terms of efficiency and accuracy.
翻译:多数现有方法通常将非盲目分解问题发展成一个最大螺旋形框架,并通过手工设计各种正规化术语和潜在清晰图像的数据术语加以解决。然而,明确设计这两个术语相当富有挑战性,通常导致难以解决的复杂的优化问题。在本文件中,我们提出一种有效的非盲分解方法,通过学习歧视性缩小功能来隐含这些术语的模型。与大多数使用深卷神经网络(CNNs)或辐射基础功能来简单学习正规化术语的大多数现有方法相比,我们制定数据术语和正规化术语,并将分解变异模型分为与数据相关和正规化有关的子问题,根据乘数的交替方向方法,我们探讨最大输出功能的特性,并开发一个带有最大值层的深重CNN模型,以直接了解这两个子问题的解决办法。此外,由于基于快速变异的图像修复通常会导致固定的工艺品,同时将基于正向准和正统化的精度模型拆化的分解,我们开发了最深重的CNN模型,我们开发了高端CNN模型,以便直接接近这两个子问题的解决办法。我们开发了以快速的模型,从而有效地恢复了以稳定、高效的模型。