Classification of architectural styles in Chinese traditional settlements using remote sensing images and building facade pictures

The classification of Chinese traditional settlements (CTSs) is extremely important for their differentiated development and protection. The innovative double-branch classification model developed in this study comprehensively utilized the features of remote sensing (RS) images and building facade p...

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Veröffentlicht in:Journal of geographical sciences 2024-12, Vol.34 (12), p.2457-2476
Hauptverfasser: Zhang, Xiaoxia, Li, Shaodan, Chen, Changyao
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container_title Journal of geographical sciences
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creator Zhang, Xiaoxia
Li, Shaodan
Chen, Changyao
description The classification of Chinese traditional settlements (CTSs) is extremely important for their differentiated development and protection. The innovative double-branch classification model developed in this study comprehensively utilized the features of remote sensing (RS) images and building facade pictures (BFPs). This approach was able to overcome the limitations of previous methods that used only building facade images to classify settlements. First, the features of the roofs and walls were extracted using a double-branch structure, which consisted of an RS image branch and BFP branch. Then, a feature fusion module was designed to fuse the features of the roofs and walls. The precision, recall, and F1-score of the proposed model were improved by more than 4% compared with the classification model using only RS images or BFPs. The same three indexes of the proposed model were improved by more than 2% compared with other deep learning models. The results demonstrated that the proposed model performed well in the classification of architectural styles in CTSs.
doi_str_mv 10.1007/s11442-024-2300-5
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The innovative double-branch classification model developed in this study comprehensively utilized the features of remote sensing (RS) images and building facade pictures (BFPs). This approach was able to overcome the limitations of previous methods that used only building facade images to classify settlements. First, the features of the roofs and walls were extracted using a double-branch structure, which consisted of an RS image branch and BFP branch. Then, a feature fusion module was designed to fuse the features of the roofs and walls. The precision, recall, and F1-score of the proposed model were improved by more than 4% compared with the classification model using only RS images or BFPs. The same three indexes of the proposed model were improved by more than 2% compared with other deep learning models. 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subjects Building facades
Classification
Earth and Environmental Science
Geographical Information Systems/Cartography
Geography
Nature Conservation
Physical Geography
Remote sensing
Remote Sensing/Photogrammetry
title Classification of architectural styles in Chinese traditional settlements using remote sensing images and building facade pictures
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