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Main Authors: Huo, Tianci, Qi, Lingfeng, Chen, Yuhan, Xue, Qihong, Shao, Jinyuan, Yu, Hai, Li, Jie, Zhang, Zhanhua, Li, Guofa
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.04496
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author Huo, Tianci
Qi, Lingfeng
Chen, Yuhan
Xue, Qihong
Shao, Jinyuan
Yu, Hai
Li, Jie
Zhang, Zhanhua
Li, Guofa
author_facet Huo, Tianci
Qi, Lingfeng
Chen, Yuhan
Xue, Qihong
Shao, Jinyuan
Yu, Hai
Li, Jie
Zhang, Zhanhua
Li, Guofa
contents Inevitable specular highlights in practical environments severely impair the visual performance, thus degrading the task effectiveness and efficiency. Although there exist considerable methods that focus on local information from convolutional neural network models or global information from transformer models, the single-type model falls into a modeling dilemma between local fine-grained details and global long-range dependencies, thus deteriorating for specular highlights with different scales. Therefore, to accommodate specular highlights of all scales, we propose a multi-model architecture for specular highlight removal (MM-SHR) that effectively captures fine-grained features in highlight regions and models long-range dependencies between highlight and highlight-free areas. Specifically, we employ convolution operations to extract local details in the shallow layers of MM-SHR, and utilize the attention mechanism to capture global features in the deep layers, ensuring both operation efficiency and removal accuracy. To model long-range dependencies without compromising computational complexity, we utilize a coarse-to-fine manner and propose Omni-Directional Attention Integration Block(OAIBlock) and Adaptive Region-Aware Hybrid-Domain Dual Attention Convolutional Network(HDDAConv) , which leverage omni-directiona pixel-shifting and window-dividing operations at the raw features to achieve specular highlight removal. Extensive experimental results on three benchmark tasks and six types of surface materials demonstrate that MM-SHR outperforms state-of-the-art methods in both accuracy and efficiency for specular highlight removal. The implementation will be made publicly available at https://github.com/Htcicv/MM-SHR.
format Preprint
id arxiv_https___arxiv_org_abs_2512_04496
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Shift-Window Meets Dual Attention: A Multi-Model Architecture for Specular Highlight Removal
Huo, Tianci
Qi, Lingfeng
Chen, Yuhan
Xue, Qihong
Shao, Jinyuan
Yu, Hai
Li, Jie
Zhang, Zhanhua
Li, Guofa
Computer Vision and Pattern Recognition
Inevitable specular highlights in practical environments severely impair the visual performance, thus degrading the task effectiveness and efficiency. Although there exist considerable methods that focus on local information from convolutional neural network models or global information from transformer models, the single-type model falls into a modeling dilemma between local fine-grained details and global long-range dependencies, thus deteriorating for specular highlights with different scales. Therefore, to accommodate specular highlights of all scales, we propose a multi-model architecture for specular highlight removal (MM-SHR) that effectively captures fine-grained features in highlight regions and models long-range dependencies between highlight and highlight-free areas. Specifically, we employ convolution operations to extract local details in the shallow layers of MM-SHR, and utilize the attention mechanism to capture global features in the deep layers, ensuring both operation efficiency and removal accuracy. To model long-range dependencies without compromising computational complexity, we utilize a coarse-to-fine manner and propose Omni-Directional Attention Integration Block(OAIBlock) and Adaptive Region-Aware Hybrid-Domain Dual Attention Convolutional Network(HDDAConv) , which leverage omni-directiona pixel-shifting and window-dividing operations at the raw features to achieve specular highlight removal. Extensive experimental results on three benchmark tasks and six types of surface materials demonstrate that MM-SHR outperforms state-of-the-art methods in both accuracy and efficiency for specular highlight removal. The implementation will be made publicly available at https://github.com/Htcicv/MM-SHR.
title Shift-Window Meets Dual Attention: A Multi-Model Architecture for Specular Highlight Removal
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.04496