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Towards the deep learning recognition of cultivated terraces based on Lidar data: The case of Slovenia Cover

Towards the deep learning recognition of cultivated terraces based on Lidar data: The case of Slovenia

Open Access
|Apr 2024

Abstract

Cultivated terraces are phenomena that have been protected in some areas for both their cultural heritage and food production purposes. Some terraced areas are disappearing but could be revitalised. To this end, recognition techniques need to be developed and terrace registers need to be established. The goal of this study was to recognise terraces using deep learning based on Lidar DEM. Lidar data is a valuable resource in countries with overgrown terraces. The U-net model training was conducted using data from the Slovenian terraces register for southwestern Slovenia and was subsequently applied to the entire country. We then analysed the agreement between the terraces register and the terraces recognised by deep learning. The overall accuracy of the model was 85%; however, the kappa index was only 0.22. The success rate was higher in some regions. Our results achieved lower accuracy compared to studies from China, where similar techniques were used but which incorporated satellite imagery, DEM, as well as land use data. This study was the first attempt at deep learning terrace recognition based solely on high-resolution DEM, highlighting examples of false terrace recognition that may be related to natural or other artificial terrace-like features.

DOI: https://doi.org/10.2478/mgr-2024-0006 | Journal eISSN: 2199-6202 | Journal ISSN: 1210-8812
Language: English
Page range: 66 - 78
Submitted on: Aug 29, 2023
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Accepted on: Feb 10, 2024
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Published on: Apr 3, 2024
In partnership with: Paradigm Publishing Services
Publication frequency: 4 issues per year

© 2024 Rok Ciglič, Anže Glušič, Lenart Štaut, Luka Čehovin Zajc, published by Czech Academy of Sciences, Institute of Geonics
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 License.