@inproceedings{5742a6fa423642cd9a71bf1d5765c632,
title = "Demoir{\'e}ingMamba: Visual State Space Model for Image Demoir{\'e}ing",
abstract = "Moir{\'e} effect is important in image processing because it causes unwanted patterns that reduce image quality, especially during scanning or digitization.Many deep learning-based approaches, including CNN-and Transformer-based methods, have been effectively employed to remove Moir{\'e} patterns, delivering promising results.While CNNs struggle with modeling remote dependencies, transformers face challenges due to their quadratic computational complexity.Recently, the state space model (SSM) known as Mamba has emerged as a promising solution, efficiently capturing long-range interactions with the advantage of linear computational complexity.This paper proposes a two-stage moir{\'e} removal network through Mamba architecture for removing Moir{\'e} patterns.In the first stage, we leverage Mamba's capability to identify moir{\'e}-contaminated areas and analyze the spatial distribution of the contamination.In the second stage, the detected patterns, along with the contaminated image, are input into a refinement network for restoration.This distinct separation between detection and refinement enables a more precise and efficient removal of moir{\'e} patterns, leading to improved restoration outcomes.Experiments conducted on publicly available datasets demonstrate that our model outperforms state-of-the-art methods, achieving superior quantitative and qualitative results, and producing image restorations with enhanced clarity and fine detail.",
keywords = "deep learning, image restoration, mamba, Moir{\'e} pattern",
author = "Yeh, {Chia Hung} and Chen Lo",
note = "Publisher Copyright: {\textcopyright} 2024 SPIE.; 2025 International Workshop on Advanced Imaging Technology, IWAIT 2025 ; Conference date: 06-01-2025 Through 08-01-2025",
year = "2025",
doi = "10.1117/12.3057080",
language = "English",
series = "Proceedings of SPIE - The International Society for Optical Engineering",
publisher = "SPIE",
editor = "Masayuki Nakajima and Chuan-Yu Chang and Chia-Hung Yeh and Jae-Gon Kim and Kemao Qian and Lau, {Phooi Yee}",
booktitle = "International Workshop on Advanced Imaging Technology, IWAIT 2025",
}