期刊论文详细信息
Remote Sensing 卷:14
Urban Sprawl and COVID-19 Impact Analysis by Integrating Deep Learning with Google Earth Engine
Daniele Cerra1  Peter Reinartz1  Stefan Auer1  Chiara Zarro2  Silvia Liberata Ullo2 
[1] Earth Observation Center, Remote Sensing Technology Institute, German Aerospace Center (DLR), 82234 Oberpfaffenhofen, Germany;
[2] Remote Sensing and Telecommunication Laboratory, Engineering Department, University of Sannio, 82100 Benevento, Italy;
关键词: urban sprawl;    data fusion;    Sentinel-2;    Copernicus;    synthetic aperture radar;    deep learning;   
DOI  :  10.3390/rs14092038
来源: DOAJ
【 摘 要 】

Timely information on land use, vegetation coverage, and air and water quality, are crucial for monitoring and managing territories, especially for areas in which there is dynamic urban expansion. However, getting accessible, accurate, and reliable information is not an easy task, since the significant increase in remote sensing data volume poses challenges for the timely processing and analysis of the resulting massive data volume. From this perspective, classical methods for urban monitoring present some limitations and more innovative technologies, such as artificial-intelligence-based algorithms, must be exploited, together with performing cloud platforms and ad hoc pre-processing steps. To this end, this paper presents an approach to the use of cloud-enabled deep-learning technology for urban sprawl detection and monitoring, through the fusion of optical and synthetic aperture radar data, by integrating the Google Earth Engine cloud platform with deep-learning techniques through the use of the open-source TensorFlow library. The model, based on a U-Net architecture, was applied to evaluate urban changes in Phoenix, the second fastest-growing metropolitan area in the United States. The available ancillary information on newly built areas showed good agreement with the produced change detection maps. Moreover, the results were temporally related to the appearance of the SARS-CoV-2 (commonly known as COVID-19) pandemic, showing a decrease in urban expansion during the event. The proposed solution may be employed for the efficient management of dynamic urban areas, providing a decision support system to help policy makers in the measurement of changes in territories and to monitor their impact on phenomena related to urbanization growth and density. The reference data were manually derived by the authors over an area of approximately 216 km2, referring to 2019, based on the visual interpretation of high resolution images, and are openly available.

【 授权许可】

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