Plug-and-Play methods constitute a class of iterative algorithms for imaging problems where regularization is performed by an off-the-shelf denoiser. Although Plug-and-Play methods can lead to tremendous visual performance for various image problems, the few existing convergence guarantees are based on unrealistic (or suboptimal) hypotheses on the denoiser, or limited to strongly convex data terms. In this work, we propose a new type of Plug-and-Play methods, based on half-quadratic splitting, for which the denoiser is realized as a gradient descent step on a functional parameterized by a deep neural network. Exploiting convergence results for proximal gradient descent algorithms in the non-convex setting, we show that the proposed Plug-and-Play algorithm is a convergent iterative scheme that targets stationary points of an explicit global functional. Besides, experiments show that it is possible to learn such a deep denoiser while not compromising the performance in comparison to other state-of-the-art deep denoisers used in Plug-and-Play schemes. We apply our proximal gradient algorithm to various ill-posed inverse problems, e.g. deblurring, super-resolution and inpainting. For all these applications, numerical results empirically confirm the convergence results. Experiments also show that this new algorithm reaches state-of-the-art performance, both quantitatively and qualitatively.
翻译:Plug- and-Play 方法构成了成像问题的一种迭代算法, 在成像问题中, 由现成的脱衣舞女执行正规化。 虽然脱衣舞和脱衣舞可以导致各种图像问题的巨大视觉性能, 现有的少数趋同保证是基于脱衣舞女的不切实际( 或亚优) 假设, 或仅限于强烈的 convex 数据术语。 在这项工作中, 我们建议了一种新的 Plug- 和脱衣舞方法, 其基础是半赤道分解, 其脱衣舞者是作为由深层神经网络化的功能参数的梯度下降步骤实现的。 在非confulx 设置中, 将原成色梯度梯度下降率算法的趋同结果加以利用, 我们用这种高深色分解法, 并用这种高等级化的数值递增分法 来显示我们用于Plug- dligal- decal- plainal-al- pal- pal- pal- pal- pal- presligal- pal- presental- pal- pal- pal- pal- pal- pal- pal- pal- pal- pal- pal- pal- pal- pal- pal- pal- pal- pal- pal- lemental- sal- pal- pal- sal- palmentalmentalmentalmentalmentalmental- sal- sal- sal- sal- salmentalmental.