参数化复杂度
计算机科学
人工神经网络
可靠性(半导体)
反问题
人工智能
图像(数学)
迭代重建
高斯分布
降噪
数学优化
算法
正多边形
图像质量
数学
数学分析
物理
量子力学
功率(物理)
几何学
作者
Alexis Goujon,Sebastian Neumayer,Pakshal Bohra,Ducotterd, Stanislas,Michael Unser
出处
期刊:IEEE transactions on computational imaging
日期:2023-01-01
卷期号:: 1-15
标识
DOI:10.1109/tci.2023.3306100
摘要
The emergence of deep-learning-based methods to solve image-reconstruction problems has enabled a significant increase in quality. Unfortunately, these new methods often lack reliability and explainability, and there is a growing interest to address these shortcomings while retaining the boost in performance. In this work, we tackle this issue by revisiting regularizers that are the sum of convex-ridge functions. The gradient of such regularizers is parameterized 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 multistep Gaussian denoiser. The numerical experiments for denoising, CT, and MRI reconstruction show improvements over methods that offer similar reliability guarantees.
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