2023
DOI: 10.3390/s23083805
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Combining Deep Learning and Multi-Source GIS Methods to Analyze Urban and Greening Changes

Abstract: Although many authors have observed a degradation in greening cover alongside an increase in the built-up areas, resulting in a deterioration of the essential environmental services for the well-being of ecosystems and society, few studies have measured how greening developed in its full spatiotemporal configuration with urban development using innovative remote sensing (RS) technologies. Focusing on this issue, the authors propose an innovative methodology for the analysis of the urban and greening changes ov… Show more

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Cited by 11 publications
(2 citation statements)
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“…First, the orthoimages referred to 2000 and S-2 satellite images for 2022 are processed employing the experimental AI platform, which combines Deep Learning (DL) technologies to classify and segment building heritage from satellite and orthoimages, with GIS techniques to import, use, and process its output to analyze the urban growth over time [59,60].…”
Section: Image Classification and Segmentationmentioning
confidence: 99%
“…First, the orthoimages referred to 2000 and S-2 satellite images for 2022 are processed employing the experimental AI platform, which combines Deep Learning (DL) technologies to classify and segment building heritage from satellite and orthoimages, with GIS techniques to import, use, and process its output to analyze the urban growth over time [59,60].…”
Section: Image Classification and Segmentationmentioning
confidence: 99%
“…On the other hand, Hadjimitsis et al [46] proposed the remote sensing method and GIS data, including topography, climate, vegetation, and population density, to classify cultural and natural world heritage sites. Francini et al [47] used a hybrid machine learning approach that combines GIS data with deep learning.…”
Section: The Selection Criteria Of the Inputs And Outputs For The Cla...mentioning
confidence: 99%