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Main Authors: He, Junyi, Chen, Liuling, Zhou, Hongyang, xiaoxing, Zhang, Zhu, Xiaobin, Yu, Shengxiang, Qin, Jingyan, Yin, Xu-Cheng
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.07211
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author He, Junyi
Chen, Liuling
Zhou, Hongyang
xiaoxing, Zhang
Zhu, Xiaobin
Yu, Shengxiang
Qin, Jingyan
Yin, Xu-Cheng
author_facet He, Junyi
Chen, Liuling
Zhou, Hongyang
xiaoxing, Zhang
Zhu, Xiaobin
Yu, Shengxiang
Qin, Jingyan
Yin, Xu-Cheng
contents Image restoration has seen substantial progress in recent years. However, existing methods often neglect depth information, which hurts similarity matching, results in attention distractions in shallow depth-of-field (DoF) scenarios, and excessive enhancement of background content in deep DoF settings. To overcome these limitations, we propose a novel Depth-Guided Network (DGN) for image restoration, together with a novel large-scale high-resolution dataset. Specifically, the network consists of two interactive branches: a depth estimation branch that provides structural guidance, and an image restoration branch that performs the core restoration task. In addition, the image restoration branch exploits intra-object similarity through progressive window-based self-attention and captures inter-object similarity via sparse non-local attention. Through joint training, depth features contribute to improved restoration quality, while the enhanced visual features from the restoration branch in turn help refine depth estimation. Notably, we also introduce a new dataset for training and evaluation, consisting of 9,205 high-resolution images from 403 plant species, with diverse depth and texture variations. Extensive experiments show that our method achieves state-of-the-art performance on several standard benchmarks and generalizes well to unseen plant images, demonstrating its effectiveness and robustness.
format Preprint
id arxiv_https___arxiv_org_abs_2508_07211
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Similarity Matters: A Novel Depth-guided Network for Image Restoration and A New Dataset
He, Junyi
Chen, Liuling
Zhou, Hongyang
xiaoxing, Zhang
Zhu, Xiaobin
Yu, Shengxiang
Qin, Jingyan
Yin, Xu-Cheng
Computer Vision and Pattern Recognition
Image restoration has seen substantial progress in recent years. However, existing methods often neglect depth information, which hurts similarity matching, results in attention distractions in shallow depth-of-field (DoF) scenarios, and excessive enhancement of background content in deep DoF settings. To overcome these limitations, we propose a novel Depth-Guided Network (DGN) for image restoration, together with a novel large-scale high-resolution dataset. Specifically, the network consists of two interactive branches: a depth estimation branch that provides structural guidance, and an image restoration branch that performs the core restoration task. In addition, the image restoration branch exploits intra-object similarity through progressive window-based self-attention and captures inter-object similarity via sparse non-local attention. Through joint training, depth features contribute to improved restoration quality, while the enhanced visual features from the restoration branch in turn help refine depth estimation. Notably, we also introduce a new dataset for training and evaluation, consisting of 9,205 high-resolution images from 403 plant species, with diverse depth and texture variations. Extensive experiments show that our method achieves state-of-the-art performance on several standard benchmarks and generalizes well to unseen plant images, demonstrating its effectiveness and robustness.
title Similarity Matters: A Novel Depth-guided Network for Image Restoration and A New Dataset
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2508.07211