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AGs-Unet: Building Extraction Model for High Resolution Remote Sensing Images Based on Attention Gates U Network

Building contour extraction from high-resolution remote sensing images is a basic task for the reasonable planning of regional construction. Recently, building segmentation methods based on the U-Net network have become popular as they largely improve the segmentation accuracy by applying ‘skip conn...

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Autores principales: Yu, Mingyang, Chen, Xiaoxian, Zhang, Wenzhuo, Liu, Yaohui
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9031445/
https://www.ncbi.nlm.nih.gov/pubmed/35458917
http://dx.doi.org/10.3390/s22082932
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author Yu, Mingyang
Chen, Xiaoxian
Zhang, Wenzhuo
Liu, Yaohui
author_facet Yu, Mingyang
Chen, Xiaoxian
Zhang, Wenzhuo
Liu, Yaohui
author_sort Yu, Mingyang
collection PubMed
description Building contour extraction from high-resolution remote sensing images is a basic task for the reasonable planning of regional construction. Recently, building segmentation methods based on the U-Net network have become popular as they largely improve the segmentation accuracy by applying ‘skip connection’ to combine high-level and low-level feature information more effectively. Meanwhile, researchers have demonstrated that introducing an attention mechanism into U-Net can enhance local feature expression and improve the performance of building extraction in remote sensing images. In this paper, we intend to explore the effectiveness of the primeval attention gate module and propose the novel Attention Gate Module (AG) based on adjusting the position of ‘Resampler’ in an attention gate to Sigmoid function for a building extraction task, and a novel Attention Gates U network (AGs-Unet) is further proposed based on AG, which can automatically learn different forms of building structures in high-resolution remote sensing images and realize efficient extraction of building contour. AGs-Unet integrates attention gates with a single U-Net network, in which a series of attention gate modules are added into the ‘skip connection’ for suppressing the irrelevant and noisy feature responses in the input image to highlight the dominant features of the buildings in the image. AGs-Unet improves the feature selection of the attention map to enhance the ability of feature learning, as well as paying attention to the feature information of small-scale buildings. We conducted the experiments on the WHU building dataset and the INRIA Aerial Image Labeling dataset, in which the proposed AGs-Unet model is compared with several classic models (such as FCN8s, SegNet, U-Net, and DANet) and two state-of-the-art models (such as PISANet, and ARC-Net). The extraction accuracy of each model is evaluated by using three evaluation indexes, namely, overall accuracy, precision, and intersection over union. Experimental results show that the proposed AGs-Unet model can improve the quality of building extraction from high-resolution remote sensing images effectively in terms of prediction performance and result accuracy.
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spelling pubmed-90314452022-04-23 AGs-Unet: Building Extraction Model for High Resolution Remote Sensing Images Based on Attention Gates U Network Yu, Mingyang Chen, Xiaoxian Zhang, Wenzhuo Liu, Yaohui Sensors (Basel) Article Building contour extraction from high-resolution remote sensing images is a basic task for the reasonable planning of regional construction. Recently, building segmentation methods based on the U-Net network have become popular as they largely improve the segmentation accuracy by applying ‘skip connection’ to combine high-level and low-level feature information more effectively. Meanwhile, researchers have demonstrated that introducing an attention mechanism into U-Net can enhance local feature expression and improve the performance of building extraction in remote sensing images. In this paper, we intend to explore the effectiveness of the primeval attention gate module and propose the novel Attention Gate Module (AG) based on adjusting the position of ‘Resampler’ in an attention gate to Sigmoid function for a building extraction task, and a novel Attention Gates U network (AGs-Unet) is further proposed based on AG, which can automatically learn different forms of building structures in high-resolution remote sensing images and realize efficient extraction of building contour. AGs-Unet integrates attention gates with a single U-Net network, in which a series of attention gate modules are added into the ‘skip connection’ for suppressing the irrelevant and noisy feature responses in the input image to highlight the dominant features of the buildings in the image. AGs-Unet improves the feature selection of the attention map to enhance the ability of feature learning, as well as paying attention to the feature information of small-scale buildings. We conducted the experiments on the WHU building dataset and the INRIA Aerial Image Labeling dataset, in which the proposed AGs-Unet model is compared with several classic models (such as FCN8s, SegNet, U-Net, and DANet) and two state-of-the-art models (such as PISANet, and ARC-Net). The extraction accuracy of each model is evaluated by using three evaluation indexes, namely, overall accuracy, precision, and intersection over union. Experimental results show that the proposed AGs-Unet model can improve the quality of building extraction from high-resolution remote sensing images effectively in terms of prediction performance and result accuracy. MDPI 2022-04-11 /pmc/articles/PMC9031445/ /pubmed/35458917 http://dx.doi.org/10.3390/s22082932 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Yu, Mingyang
Chen, Xiaoxian
Zhang, Wenzhuo
Liu, Yaohui
AGs-Unet: Building Extraction Model for High Resolution Remote Sensing Images Based on Attention Gates U Network
title AGs-Unet: Building Extraction Model for High Resolution Remote Sensing Images Based on Attention Gates U Network
title_full AGs-Unet: Building Extraction Model for High Resolution Remote Sensing Images Based on Attention Gates U Network
title_fullStr AGs-Unet: Building Extraction Model for High Resolution Remote Sensing Images Based on Attention Gates U Network
title_full_unstemmed AGs-Unet: Building Extraction Model for High Resolution Remote Sensing Images Based on Attention Gates U Network
title_short AGs-Unet: Building Extraction Model for High Resolution Remote Sensing Images Based on Attention Gates U Network
title_sort ags-unet: building extraction model for high resolution remote sensing images based on attention gates u network
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9031445/
https://www.ncbi.nlm.nih.gov/pubmed/35458917
http://dx.doi.org/10.3390/s22082932
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