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Main Authors: Xie, Yakun, Liu, Suning, Chen, Hongyu, Cao, Shaohan, Zhang, Huixin, Feng, Dejun, Wan, Qian, Zhu, Jun, Zhu, Qing
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.23991
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author Xie, Yakun
Liu, Suning
Chen, Hongyu
Cao, Shaohan
Zhang, Huixin
Feng, Dejun
Wan, Qian
Zhu, Jun
Zhu, Qing
author_facet Xie, Yakun
Liu, Suning
Chen, Hongyu
Cao, Shaohan
Zhang, Huixin
Feng, Dejun
Wan, Qian
Zhu, Jun
Zhu, Qing
contents Despite significant advancements in salient object detection(SOD) in optical remote sensing images(ORSI), challenges persist due to the intricate edge structures of ORSIs and the complexity of their contextual relationships. Current deep learning approaches encounter difficulties in accurately identifying boundary features and lack efficiency in collaboratively modeling the foreground and background by leveraging contextual features. To address these challenges, we propose a stronger multifaceted collaborative salient object detector in ORSIs, termed LBA-MCNet, which incorporates aspects of localization, balance, and affinity. The network focuses on accurately locating targets, balancing detailed features, and modeling image-level global context information. Specifically, we design the Edge Feature Adaptive Balancing and Adjusting(EFABA) module for precise edge localization, using edge features to guide attention to boundaries and preserve spatial details. Moreover, we design the Global Distributed Affinity Learning(GDAL) module to model global context. It captures global context by generating an affinity map from the encoders final layer, ensuring effective modeling of global patterns. Additionally, deep supervision during deconvolution further enhances feature representation. Finally, we compared with 28 state of the art approaches on three publicly available datasets. The results clearly demonstrate the superiority of our method.
format Preprint
id arxiv_https___arxiv_org_abs_2410_23991
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Localization, balance and affinity: a stronger multifaceted collaborative salient object detector in remote sensing images
Xie, Yakun
Liu, Suning
Chen, Hongyu
Cao, Shaohan
Zhang, Huixin
Feng, Dejun
Wan, Qian
Zhu, Jun
Zhu, Qing
Computer Vision and Pattern Recognition
Artificial Intelligence
Despite significant advancements in salient object detection(SOD) in optical remote sensing images(ORSI), challenges persist due to the intricate edge structures of ORSIs and the complexity of their contextual relationships. Current deep learning approaches encounter difficulties in accurately identifying boundary features and lack efficiency in collaboratively modeling the foreground and background by leveraging contextual features. To address these challenges, we propose a stronger multifaceted collaborative salient object detector in ORSIs, termed LBA-MCNet, which incorporates aspects of localization, balance, and affinity. The network focuses on accurately locating targets, balancing detailed features, and modeling image-level global context information. Specifically, we design the Edge Feature Adaptive Balancing and Adjusting(EFABA) module for precise edge localization, using edge features to guide attention to boundaries and preserve spatial details. Moreover, we design the Global Distributed Affinity Learning(GDAL) module to model global context. It captures global context by generating an affinity map from the encoders final layer, ensuring effective modeling of global patterns. Additionally, deep supervision during deconvolution further enhances feature representation. Finally, we compared with 28 state of the art approaches on three publicly available datasets. The results clearly demonstrate the superiority of our method.
title Localization, balance and affinity: a stronger multifaceted collaborative salient object detector in remote sensing images
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2410.23991