Physics-Informed Image Restoration via Progressive PDE Integration
Shamika Likhite, Santiago L\'opez-Tapia, Aggelos K. Katsaggelos

TL;DR
This paper introduces a physics-informed PDE integration into deep learning models for motion deblurring, capturing global motion patterns more effectively and improving restoration quality with minimal computational overhead.
Contribution
It proposes a novel PDE-based global feature modeling framework that enhances existing deep learning architectures for motion deblurring by incorporating physical motion principles.
Findings
Significant PSNR and SSIM improvements across multiple architectures.
Minimal additional computational cost (~1% GMACs).
Effective modeling of motion blur through PDE-guided feature evolution.
Abstract
Motion blur, caused by relative movement between camera and scene during exposure, significantly degrades image quality and impairs downstream computer vision tasks such as object detection, tracking, and recognition in dynamic environments. While deep learning-based motion deblurring methods have achieved remarkable progress, existing approaches face fundamental challenges in capturing the long-range spatial dependencies inherent in motion blur patterns. Traditional convolutional methods rely on limited receptive fields and require extremely deep networks to model global spatial relationships. These limitations motivate the need for alternative approaches that incorporate physical priors to guide feature evolution during restoration. In this paper, we propose a progressive training framework that integrates physics-informed PDE dynamics into state-of-the-art restoration architectures.…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Generative Adversarial Networks and Image Synthesis · Model Reduction and Neural Networks
