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Main Authors: Yang, Kangning, Sun, Huiming, Cai, Jie, Fu, Lan, Ding, Jiaming, Li, Jinlong, Ho, Chiu Man, Meng, Zibo
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2502.08836
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author Yang, Kangning
Sun, Huiming
Cai, Jie
Fu, Lan
Ding, Jiaming
Li, Jinlong
Ho, Chiu Man
Meng, Zibo
author_facet Yang, Kangning
Sun, Huiming
Cai, Jie
Fu, Lan
Ding, Jiaming
Li, Jinlong
Ho, Chiu Man
Meng, Zibo
contents The phenomenon of reflection is quite common in digital images, posing significant challenges for various applications such as computer vision, photography, and image processing. Traditional methods for reflection removal often struggle to achieve clean results while maintaining high fidelity and robustness, particularly in real-world scenarios. Over the past few decades, numerous deep learning-based approaches for reflection removal have emerged, yielding impressive results. In this survey, we conduct a comprehensive review of the current literature by focusing on key venues such as ICCV, ECCV, CVPR, NeurIPS, etc., as these conferences and journals have been central to advances in the field. Our review follows a structured paper selection process, and we critically assess both single-stage and two-stage deep learning methods for reflection removal. The contribution of this survey is three-fold: first, we provide a comprehensive summary of the most recent work on single-image reflection removal; second, we outline task hypotheses, current deep learning techniques, publicly available datasets, and relevant evaluation metrics; and third, we identify key challenges and opportunities in deep learning-based reflection removal, highlighting the potential of this rapidly evolving research area.
format Preprint
id arxiv_https___arxiv_org_abs_2502_08836
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Survey on Single-Image Reflection Removal using Deep Learning Techniques
Yang, Kangning
Sun, Huiming
Cai, Jie
Fu, Lan
Ding, Jiaming
Li, Jinlong
Ho, Chiu Man
Meng, Zibo
Computer Vision and Pattern Recognition
The phenomenon of reflection is quite common in digital images, posing significant challenges for various applications such as computer vision, photography, and image processing. Traditional methods for reflection removal often struggle to achieve clean results while maintaining high fidelity and robustness, particularly in real-world scenarios. Over the past few decades, numerous deep learning-based approaches for reflection removal have emerged, yielding impressive results. In this survey, we conduct a comprehensive review of the current literature by focusing on key venues such as ICCV, ECCV, CVPR, NeurIPS, etc., as these conferences and journals have been central to advances in the field. Our review follows a structured paper selection process, and we critically assess both single-stage and two-stage deep learning methods for reflection removal. The contribution of this survey is three-fold: first, we provide a comprehensive summary of the most recent work on single-image reflection removal; second, we outline task hypotheses, current deep learning techniques, publicly available datasets, and relevant evaluation metrics; and third, we identify key challenges and opportunities in deep learning-based reflection removal, highlighting the potential of this rapidly evolving research area.
title Survey on Single-Image Reflection Removal using Deep Learning Techniques
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2502.08836