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Deep neural network regression for normalized digital surface model generation with Sentinel-2 imagery

Please always quote using this URN: urn:nbn:de:bvb:20-opus-349424
  • In recent history, normalized digital surface models (nDSMs) have been constantly gaining importance as a means to solve large-scale geographic problems. High-resolution surface models are precious, as they can provide detailed information for a specific area. However, measurements with a high resolution are time consuming and costly. Only a few approaches exist to create high-resolution nDSMs for extensive areas. This article explores approaches to extract high-resolution nDSMs from low-resolution Sentinel-2 data, allowing us to deriveIn recent history, normalized digital surface models (nDSMs) have been constantly gaining importance as a means to solve large-scale geographic problems. High-resolution surface models are precious, as they can provide detailed information for a specific area. However, measurements with a high resolution are time consuming and costly. Only a few approaches exist to create high-resolution nDSMs for extensive areas. This article explores approaches to extract high-resolution nDSMs from low-resolution Sentinel-2 data, allowing us to derive large-scale models. We thereby utilize the advantages of Sentinel 2 being open access, having global coverage, and providing steady updates through a high repetition rate. Several deep learning models are trained to overcome the gap in producing high-resolution surface maps from low-resolution input data. With U-Net as a base architecture, we extend the capabilities of our model by integrating tailored multiscale encoders with differently sized kernels in the convolution as well as conformed self-attention inside the skip connection gates. Using pixelwise regression, our U-Net base models can achieve a mean height error of approximately 2 m. Moreover, through our enhancements to the model architecture, we reduce the model error by more than 7%.show moreshow less

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Metadaten
Author: Konstantin MüllerORCiD, Robert LeppichORCiD, Christian Geiß, Vanessa BorstORCiD, Patrick Aravena Pelizari, Samuel KounevORCiD, Hannes TaubenböckORCiD
URN:urn:nbn:de:bvb:20-opus-349424
Document Type:Journal article
Faculties:Fakultät für Mathematik und Informatik / Institut für Informatik
Language:English
Parent Title (English):IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
ISSN:1939-1404
Year of Completion:2023
Volume:16
Pagenumber:8508-8519
Source:IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing (2023) 16:8508-8519. DOI: 10.1109/JSTARS.2023.3297710
DOI:https://doi.org/10.1109/JSTARS.2023.3297710
Dewey Decimal Classification:0 Informatik, Informationswissenschaft, allgemeine Werke / 00 Informatik, Wissen, Systeme / 004 Datenverarbeitung; Informatik
Tag:Deep learning; multiscale encoder; sentinel; surface model
Release Date:2024/04/18
Licence (German):License LogoCC BY: Creative-Commons-Lizenz: Namensnennung 4.0 International