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Poster Session 4 East
Thursday, December 12, 2024 4:30 PM → 7:30 PM
Poster #1105

Cross-Scale Self-Supervised Blind Image Deblurring via Implicit Neural Representation

Tianjing Zhang, Yuhui Quan, Hui Ji
Poster

Abstract

Blind image deblurring (BID) is an important yet challenging image recovery problem. Most existing deep learning methods require supervised training with ground truth (GT) images. This paper introduces a self-supervised method for BID that does not require GT images. The key challenge is to regularize the training to prevent over-fitting due to the absence of GT images. By leveraging an exact relationship among the blurred image, latent image, and blur kernel across consecutive scales, we propose an effective cross-scale consistency loss. This is implemented by representing the image and kernel with implicit neural representations (INRs), whose resolution-free property enables consistent yet efficient computation for network training across multiple scales. Combined with a progressively coarse-to-fine training scheme, the proposed method significantly outperforms existing self-supervised methods in extensive experiments.