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Main Authors: Yang, Xi, Shi, Haoyuan, Wang, Zihan, Wang, Nannan, Gao, Xinbo
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2501.10197
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author Yang, Xi
Shi, Haoyuan
Wang, Zihan
Wang, Nannan
Gao, Xinbo
author_facet Yang, Xi
Shi, Haoyuan
Wang, Zihan
Wang, Nannan
Gao, Xinbo
contents Despite advancements in cross-domain image translation, challenges persist in asymmetric tasks such as SAR-to-Optical and Sketch-to-Instance conversions, which involve transforming data from a less detailed domain into one with richer content. Traditional CNN-based methods are effective at capturing fine details but struggle with global structure, leading to unwanted merging of image regions. To address this, we propose the CNN-Swin Hybrid Network (CSHNet), which combines two key modules: Swin Embedded CNN (SEC) and CNN Embedded Swin (CES), forming the SEC-CES-Bottleneck (SCB). SEC leverages CNN's detailed feature extraction while integrating the Swin Transformer's structural bias. CES, in turn, preserves the Swin Transformer's global integrity, compensating for CNN's lack of focus on structure. Additionally, CSHNet includes two components designed to enhance cross-domain information retention: the Interactive Guided Connection (IGC), which enables dynamic information exchange between SEC and CES, and Adaptive Edge Perception Loss (AEPL), which maintains structural boundaries during translation. Experimental results show that CSHNet outperforms existing methods in both visual quality and performance metrics across scene-level and instance-level datasets. Our code is available at: https://github.com/XduShi/CSHNet.
format Preprint
id arxiv_https___arxiv_org_abs_2501_10197
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle CSHNet: A Novel Information Asymmetric Image Translation Method
Yang, Xi
Shi, Haoyuan
Wang, Zihan
Wang, Nannan
Gao, Xinbo
Computer Vision and Pattern Recognition
Despite advancements in cross-domain image translation, challenges persist in asymmetric tasks such as SAR-to-Optical and Sketch-to-Instance conversions, which involve transforming data from a less detailed domain into one with richer content. Traditional CNN-based methods are effective at capturing fine details but struggle with global structure, leading to unwanted merging of image regions. To address this, we propose the CNN-Swin Hybrid Network (CSHNet), which combines two key modules: Swin Embedded CNN (SEC) and CNN Embedded Swin (CES), forming the SEC-CES-Bottleneck (SCB). SEC leverages CNN's detailed feature extraction while integrating the Swin Transformer's structural bias. CES, in turn, preserves the Swin Transformer's global integrity, compensating for CNN's lack of focus on structure. Additionally, CSHNet includes two components designed to enhance cross-domain information retention: the Interactive Guided Connection (IGC), which enables dynamic information exchange between SEC and CES, and Adaptive Edge Perception Loss (AEPL), which maintains structural boundaries during translation. Experimental results show that CSHNet outperforms existing methods in both visual quality and performance metrics across scene-level and instance-level datasets. Our code is available at: https://github.com/XduShi/CSHNet.
title CSHNet: A Novel Information Asymmetric Image Translation Method
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2501.10197