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Autori principali: Sirko, Wojciech, Brempong, Emmanuel Asiedu, Marcos, Juliana T. C., Annkah, Abigail, Korme, Abel, Hassen, Mohammed Alewi, Sapkota, Krishna, Shekel, Tomer, Diack, Abdoulaye, Nevo, Sella, Hickey, Jason, Quinn, John
Natura: Preprint
Pubblicazione: 2023
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Accesso online:https://arxiv.org/abs/2310.11622
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author Sirko, Wojciech
Brempong, Emmanuel Asiedu
Marcos, Juliana T. C.
Annkah, Abigail
Korme, Abel
Hassen, Mohammed Alewi
Sapkota, Krishna
Shekel, Tomer
Diack, Abdoulaye
Nevo, Sella
Hickey, Jason
Quinn, John
author_facet Sirko, Wojciech
Brempong, Emmanuel Asiedu
Marcos, Juliana T. C.
Annkah, Abigail
Korme, Abel
Hassen, Mohammed Alewi
Sapkota, Krishna
Shekel, Tomer
Diack, Abdoulaye
Nevo, Sella
Hickey, Jason
Quinn, John
contents Mapping buildings and roads automatically with remote sensing typically requires high-resolution imagery, which is expensive to obtain and often sparsely available. In this work we demonstrate how multiple 10 m resolution Sentinel-2 images can be used to generate 50 cm resolution building and road segmentation masks. This is done by training a `student' model with access to Sentinel-2 images to reproduce the predictions of a `teacher' model which has access to corresponding high-resolution imagery. While the predictions do not have all the fine detail of the teacher model, we find that we are able to retain much of the performance: for building segmentation we achieve 79.0\% mIoU, compared to the high-resolution teacher model accuracy of 85.5\% mIoU. We also describe two related methods that work on Sentinel-2 imagery: one for counting individual buildings which achieves $R^2 = 0.91$ against true counts and one for predicting building height with 1.5 meter mean absolute error. This work opens up new possibilities for using freely available Sentinel-2 imagery for a range of tasks that previously could only be done with high-resolution satellite imagery.
format Preprint
id arxiv_https___arxiv_org_abs_2310_11622
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle High-Resolution Building and Road Detection from Sentinel-2
Sirko, Wojciech
Brempong, Emmanuel Asiedu
Marcos, Juliana T. C.
Annkah, Abigail
Korme, Abel
Hassen, Mohammed Alewi
Sapkota, Krishna
Shekel, Tomer
Diack, Abdoulaye
Nevo, Sella
Hickey, Jason
Quinn, John
Computer Vision and Pattern Recognition
Mapping buildings and roads automatically with remote sensing typically requires high-resolution imagery, which is expensive to obtain and often sparsely available. In this work we demonstrate how multiple 10 m resolution Sentinel-2 images can be used to generate 50 cm resolution building and road segmentation masks. This is done by training a `student' model with access to Sentinel-2 images to reproduce the predictions of a `teacher' model which has access to corresponding high-resolution imagery. While the predictions do not have all the fine detail of the teacher model, we find that we are able to retain much of the performance: for building segmentation we achieve 79.0\% mIoU, compared to the high-resolution teacher model accuracy of 85.5\% mIoU. We also describe two related methods that work on Sentinel-2 imagery: one for counting individual buildings which achieves $R^2 = 0.91$ against true counts and one for predicting building height with 1.5 meter mean absolute error. This work opens up new possibilities for using freely available Sentinel-2 imagery for a range of tasks that previously could only be done with high-resolution satellite imagery.
title High-Resolution Building and Road Detection from Sentinel-2
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2310.11622