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Building footprint extraction from very high-resolution satellite images using deep learning

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journal contribution
posted on 2022-03-01, 12:20 authored by Prakash Ps, Bharath H. Aithal

Building footprint datasets are valuable for a variety of uses in urban settings. For a number of urban applications, polygonal building outlines with regularised bounds are required and are extremely challenging to prepare. We propose a deep learning strategy based on convolutional neural networks for retrieving building footprints. The model was trained using images from a variety of places across the metropolis, highlighting differences in land use patterns and the built environment. The evaluation measures indicate how the accuracy characteristics of distinct built-up settings differ. The results of the model are equivalent to cutting-edge building extraction methods.

Funding

This work was supported by the Indian Institute of Technology Kharagpur; and Natural Resources Data Management System

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    Journal of Spatial Science

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