Abstract
This study presents a novel defense framework to fortify Under-Display Camera (UDC) image restoration models against adversarial attacks, a previously underexplored vulnerability in this domain. Our research initially conducts an in-depth robustness evaluation of deep-learning-based UDC image restoration models by employing several white-box and black-box attacking methods. Following the assessment, we propose a two-stage approach integrating diffusion-based adversarial purification and efficient fine-tuning, uniquely designed to eliminate perturbations while retaining restoration fidelity. For the first time, we systematically evaluate seven state-of-the-art UDC models (such as DISCNet, UFormer, etc.) under diverse attacks (PGD, C&W, etc.), revealing severe performance degradation (DISCNet's PSNR drops from 35.24 to 15.16 under C&W attack). Our framework demonstrates significant improvements: after purification and fine-tuning, DISCNet's PSNR rebounds to 32.17 under PGD attack (vs. 30.17 without defense), while UFormer achieves a 19.71 PSNR under LPIPS-guided attacks (vs. 17.38 baseline). The effectiveness of our proposed approach is validated through extensive experiments, showing marked improvements in resilience against various adversarial attacks.