Random Weights Networks Work as Loss Prior Constraint for Image Restoration
Man Zhou, Naishan Zheng, Jie Huang, Xiangyu Rui, Chunle Guo, Deyu, Meng, Chongyi Li, Jinwei Gu

TL;DR
This paper explores using randomly initialized neural networks as loss priors for image restoration tasks, demonstrating that such an approach can improve performance without additional training costs.
Contribution
It introduces a novel perspective that random weights networks can serve as effective loss priors in image restoration, with multiple implementation strategies and extensive experimental validation.
Findings
Consistent performance improvements across multiple image restoration tasks.
The proposed method requires no additional training or testing costs.
Effective across various network architectures and depths.
Abstract
In this paper, orthogonal to the existing data and model studies, we instead resort our efforts to investigate the potential of loss function in a new perspective and present our belief ``Random Weights Networks can Be Acted as Loss Prior Constraint for Image Restoration''. Inspired by Functional theory, we provide several alternative solutions to implement our belief in the strict mathematical manifolds including Taylor's Unfolding Network, Invertible Neural Network, Central Difference Convolution and Zero-order Filtering as ``random weights network prototype'' with respect of the following four levels: 1) the different random weights strategies; 2) the different network architectures, \emph{eg,} pure convolution layer or transformer; 3) the different network architecture depths; 4) the different numbers of random weights network combination. Furthermore, to enlarge the capability of…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Image and Signal Denoising Methods · Advanced Image Fusion Techniques
MethodsConvolution
