Efficient building inventory extraction from satellite imagery for megacities
Accurate building inventories are essential for city planning and disaster risk management. Traditionally generated via census or selected small surveys, these suffer from data quality and/or resolu-tion. High-resolution satellite imagery with object segmentation provides an effective alternative, r...
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sg-ntu-dr.10356-1656152023-04-05T15:33:52Z Efficient building inventory extraction from satellite imagery for megacities Lo, Edmond Yat-Man Lin, En-Kai Daksiya, Velautham Shao, Kuo-Shih Chuang, Yi-Rung Pan, Tso-Chien School of Civil and Environmental Engineering Institute of Catastrophe Risk Management Engineering::Civil engineering Automated Buildings Building Inventory Accurate building inventories are essential for city planning and disaster risk management. Traditionally generated via census or selected small surveys, these suffer from data quality and/or resolu-tion. High-resolution satellite imagery with object segmentation provides an effective alternative, readily capturing large extents. This study develops a highly automated building extraction method-ology for location-based building exposure data from high (0.5 m) resolution satellite stereo imagery. The development relied on Taipei test areas covering 13.5 km2 before application to the megacity of Jakarta. Of the captured Taipei buildings, 48.8% are at one-to-one extraction, improving to 71.9% for larger buildings with total floor area >8000 m2, and to 99% when tightly-spaced building clusters are further included. Mean absolute error in extracted footprint area is 16% for these larger buildings. The extraction parameters are tuned for Jakarta buildings using small test areas before covering Jakarta’s 643 km2 with over 1.247 million buildings extracted. Published version 2023-04-04T01:59:25Z 2023-04-04T01:59:25Z 2022 Journal Article Lo, E. Y., Lin, E., Daksiya, V., Shao, K., Chuang, Y. & Pan, T. (2022). Efficient building inventory extraction from satellite imagery for megacities. Photogrammetric Engineering and Remote Sensing, 88(10), 643-652. https://dx.doi.org/10.14358/PERS.21-00053R2 0099-1112 https://hdl.handle.net/10356/165615 10.14358/PERS.21-00053R2 2-s2.0-85139460347 10 88 643 652 en Photogrammetric Engineering and Remote Sensing © 2022 American Society for Photogrammetry and Remote Sensing. This article is Open Access under the terms of the Creative Commons CC BY-NC-ND licence. See https://creativecommons.org/licenses/by-nc-nd/4.0/ application/pdf |
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Engineering::Civil engineering Automated Buildings Building Inventory Lo, Edmond Yat-Man Lin, En-Kai Daksiya, Velautham Shao, Kuo-Shih Chuang, Yi-Rung Pan, Tso-Chien Efficient building inventory extraction from satellite imagery for megacities |
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Accurate building inventories are essential for city planning and disaster risk management. Traditionally generated via census or selected small surveys, these suffer from data quality and/or resolu-tion. High-resolution satellite imagery with object segmentation provides an effective alternative, readily capturing large extents. This study develops a highly automated building extraction method-ology for location-based building exposure data from high (0.5 m) resolution satellite stereo imagery. The development relied on Taipei test areas covering 13.5 km2 before application to the megacity of Jakarta. Of the captured Taipei buildings, 48.8% are at one-to-one extraction, improving to 71.9% for larger buildings with total floor area >8000 m2, and to 99% when tightly-spaced building clusters are further included. Mean absolute error in extracted footprint area is 16% for these larger buildings. The extraction parameters are tuned for Jakarta buildings using small test areas before covering Jakarta’s 643 km2 with over 1.247 million buildings extracted. |
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School of Civil and Environmental Engineering |
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School of Civil and Environmental Engineering Lo, Edmond Yat-Man Lin, En-Kai Daksiya, Velautham Shao, Kuo-Shih Chuang, Yi-Rung Pan, Tso-Chien |
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Article |
author |
Lo, Edmond Yat-Man Lin, En-Kai Daksiya, Velautham Shao, Kuo-Shih Chuang, Yi-Rung Pan, Tso-Chien |
author_sort |
Lo, Edmond Yat-Man |
title |
Efficient building inventory extraction from satellite imagery for megacities |
title_short |
Efficient building inventory extraction from satellite imagery for megacities |
title_full |
Efficient building inventory extraction from satellite imagery for megacities |
title_fullStr |
Efficient building inventory extraction from satellite imagery for megacities |
title_full_unstemmed |
Efficient building inventory extraction from satellite imagery for megacities |
title_sort |
efficient building inventory extraction from satellite imagery for megacities |
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2023 |
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https://hdl.handle.net/10356/165615 |
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1764208109786497024 |