2021
DOI: 10.1016/j.envc.2021.100360
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Understanding the visual image of Kailash Sacred Landscape through geo-tagged landscape photos mapping

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“…Semantic segmentation is very useful in extracting image elements and supports the study of urban greening and naturalness (Li et al, 2018) and neighborhood walkability and bike ability (Yin et al, 2015). Zhang and He (2021) used the DeepLabv3+ model to realize the semantic segmentation of Kailash Sacred Landscape images to calculate the visual composition of the image with geographical coordinates. They grouped all pictures into nine categories to analyze the change in image perspective.…”
Section: Geoai-driven Urban Studymentioning
confidence: 99%
“…Semantic segmentation is very useful in extracting image elements and supports the study of urban greening and naturalness (Li et al, 2018) and neighborhood walkability and bike ability (Yin et al, 2015). Zhang and He (2021) used the DeepLabv3+ model to realize the semantic segmentation of Kailash Sacred Landscape images to calculate the visual composition of the image with geographical coordinates. They grouped all pictures into nine categories to analyze the change in image perspective.…”
Section: Geoai-driven Urban Studymentioning
confidence: 99%