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Auteurs principaux: Huang, Chaoyan, Huang, Cheng-Han, Alkhouri, Ismail R., Wang, Rongrong
Format: Preprint
Publié: 2026
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Accès en ligne:https://arxiv.org/abs/2605.25299
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author Huang, Chaoyan
Huang, Cheng-Han
Alkhouri, Ismail R.
Wang, Rongrong
author_facet Huang, Chaoyan
Huang, Cheng-Han
Alkhouri, Ismail R.
Wang, Rongrong
contents Recently, Deep Image Prior (DIP) has demonstrated strong capabilities for solving inverse imaging problems (IIPs) by optimizing a randomly initialized convolutional neural network in a training-data-free regime. However, DIP suffers from overfitting to noisy measurements due to network over-parameterization, making early stopping (ES) essential. The most successful ES method tracks fluctuations in the running variance of the network output to detect overfitting. However, in many applications, these fluctuations may appear prematurely, leading to unstable reconstructions. In this paper, we first show that nearly optimal DIP early stopping can be achieved when two independent noisy copies of the degraded image are available. Motivated by this observation, and since obtaining two fully independent copies is infeasible, we propose an overfitting detection framework based on constructing pseudo self-referenced images, resulting in three IIP-specific algorithms. Our approach is further supported by theoretical results on single-reference validation, pseudo-validation estimation, and the impact of shared noise. Across different IIPs, ranging from natural image restoration to medical image reconstruction, and under varying noise levels and noise types, our methods consistently outperform existing DIP early stopping approaches, all without requiring an accurate estimate of the noise level.
format Preprint
id arxiv_https___arxiv_org_abs_2605_25299
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle A Principled Self-Referenced Early Stopping Approach for Deep Image Prior
Huang, Chaoyan
Huang, Cheng-Han
Alkhouri, Ismail R.
Wang, Rongrong
Computer Vision and Pattern Recognition
Machine Learning
Recently, Deep Image Prior (DIP) has demonstrated strong capabilities for solving inverse imaging problems (IIPs) by optimizing a randomly initialized convolutional neural network in a training-data-free regime. However, DIP suffers from overfitting to noisy measurements due to network over-parameterization, making early stopping (ES) essential. The most successful ES method tracks fluctuations in the running variance of the network output to detect overfitting. However, in many applications, these fluctuations may appear prematurely, leading to unstable reconstructions. In this paper, we first show that nearly optimal DIP early stopping can be achieved when two independent noisy copies of the degraded image are available. Motivated by this observation, and since obtaining two fully independent copies is infeasible, we propose an overfitting detection framework based on constructing pseudo self-referenced images, resulting in three IIP-specific algorithms. Our approach is further supported by theoretical results on single-reference validation, pseudo-validation estimation, and the impact of shared noise. Across different IIPs, ranging from natural image restoration to medical image reconstruction, and under varying noise levels and noise types, our methods consistently outperform existing DIP early stopping approaches, all without requiring an accurate estimate of the noise level.
title A Principled Self-Referenced Early Stopping Approach for Deep Image Prior
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2605.25299