Using Landsat and nighttime lights for ...
Reliable representations of global urban extent remain limited, hindering scientific progress across a range of disciplines that study functionality of sustainable cities. We present an efficient and low-cost machine-learning approach for pixel-based image classification of built-up areas at a large geographic scale using Landsat data. Our methodology combines nighttime-lights data and Landsat 8 and overcomes the lack of extensive groundreference data. We demonstrate the effectiveness of our methodology, which is implemented in Google Earth Engine, through the development of accurate 30 m resolution maps that characterize built-up land cover in three geographically diverse countries: India, Mexico, and the US. Our approach highlights the usefulness of data fusion techniques for studying the built environment and is a first step towards the creation of an accurate global-scale map of urban land cover over time.
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Additional Information
Field | Value |
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Data last updated | December 8, 2020 |
Metadata last updated | December 8, 2020 |
Created | December 8, 2020 |
Format | application/pdf |
License | No License Provided |
created | over 4 years ago |
format | |
id | 1dc18e98-90b0-44bb-b39e-ead479c9a58f |
mimetype | application/pdf |
package id | 42ee9327-4156-479a-85d0-54e8724ab26f |
revision id | a8e2a9f2-dee4-4740-a91f-555d029fc797 |
state | active |