geekysethi/Urbanization-change-detection
Urbanization detection using computer vision algorithms to reduce the reliance on the data of government surveys, which will speed up the policy making process.
This tool helps urban planners and policymakers quickly identify areas undergoing urbanization. By analyzing satellite or aerial images, it pinpoints where development has occurred, providing a visual map of change. This enables faster policy formulation and resource allocation compared to traditional government survey methods.
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Use this if you need to rapidly assess urban growth patterns and land-use changes using image data for policy planning or environmental monitoring.
Not ideal if you require highly detailed, ground-level demographic or socio-economic data that only traditional surveys can provide.
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Last pushed
Dec 18, 2019
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