The emergence of deep-learning-based methods for solving inverse problems has enabled a significant increase in reconstruction quality. Unfortunately, these new methods often lack reliability and explainability, and there is a growing interest to address these shortcomings while retaining the performance. In this work, this problem is tackled by revisiting regularizers that are the sum of convex-ridge functions. The gradient of such regularizers is parametrized by a neural network that has a single hidden layer with increasing and learnable activation functions. This neural network is trained within a few minutes as a multi-step Gaussian denoiser. The numerical experiments for denoising, CT, and MRI reconstruction show improvements over methods that offer similar reliability guarantees.
翻译:以深层次学习为基础的解决逆向问题的方法的出现使得重建质量大为提高。 不幸的是,这些新方法往往缺乏可靠性和可解释性,人们越来越有兴趣在保持绩效的同时解决这些缺陷。在这项工作中,通过重新审视作为 convex-ridge 功能总和的正规化者来解决这个问题。这种正规化者的梯度被一个神经网络加以平衡,这个网络有一个单一的隐藏层,有不断增长和可学习的激活功能。这个神经网络在几分钟内作为多步骤的Gaussian denoiser来培训。关于消音、CT和MRI重建的数字实验显示,在提供类似可靠性保障的方法方面有了改进。