Vectorized rooftop area data for 90 cities in China

Zhixin Zhang(Nanjing Normal University), Zhen Qian(Nanjing Normal University), Teng Zhong(Nanjing Normal University), Min Chen(Nanjing Normal University), Kai Zhang(Nanjing Normal University), Yue Yang(Nanjing Normal University), Rui Zhu(Hong Kong Polytechnic University), Fan Zhang(Massachusetts Institute of Technology), Haoran Zhang(The University of Tokyo), Fangzhuo Zhou(Nanjing Normal University), Jianing Yu(Nanjing Normal University), Bingyue Zhang(Nanjing Normal University), Guonian Lü(Nanjing Normal University), Jinyue Yan(Mälardalen University)
Scientific Data
March 2, 2022
Cited by 163Open Access
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Abstract

Abstract Reliable information on building rooftops is crucial for utilizing limited urban space effectively. In recent decades, the demand for accurate and up-to-date data on the areas of rooftops on a large-scale is increasing. However, obtaining these data is challenging due to the limited capability of conventional computer vision methods and the high cost of 3D modeling involving aerial photogrammetry. In this study, a geospatial artificial intelligence framework is presented to obtain data for rooftops using high-resolution open-access remote sensing imagery. This framework is used to generate vectorized data for rooftops in 90 cities in China. The data was validated on test samples of 180 km 2 across different regions with spatial resolution, overall accuracy, and F1 score of 1 m, 97.95%, and 83.11%, respectively. In addition, the generated rooftop area conforms to the urban morphological characteristics and reflects urbanization level. These results demonstrate that the generated dataset can be used for data support and decision-making that can facilitate sustainable urban development effectively.


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