Automated mapping and identification of shrub individuals in South Africa's Fynbos biome using drone imagery and deep learning

peer-reviewed
Erstveröffentlichung
2022-11-24Authors
Allen, Nathaniel
Cooksley, Huw
Buchmann, Carsten
Schurr, Frank
Pagel, Jörn
Beitrag zu einer Konferenz
Published in
Proceedings of the 7th bwHPC Symposium ; 7 (2022). - S. 11-16. - Art.-Nr. 3. - ISBN 978-3-948303-29-7
Institutions
Kommunikations- und Informationszentrum (kiz)Document version
published version (publisher's PDF)Conference
7th bwHPC Symposium, 2021-11-08 - 2021-11-08, Ulm University (online event)
Abstract
In order to understand population and community dynamics, many ecological studies require comprehensive knowledge of the spatial distribution of individual organisms, but obtaining this data is a time and labor-intensive process. In this study we develop a workflow to automatically determine the species of shrubs of the Proteaceae family in South Africa's Fynbos region from drone-based photogrammetric data. We applied deep learning to segment five species of shrub individuals from the background based on spectral and height information. The spectral-height model achieved an average prediction accuracy of 74.4%, compared to 61.6% when using spectral information alone. Despite the challenge in distinguishing sprawling shrubs from the background, which may be overcome with additional training data, the presented workflow holds promise for the efficient mapping of shrub communities.
Is part of
Subject headings
[GND]: Deep learning | Fernerkundung | Protea[LCSH]: Biodiversity | Remote sensing
[DDC subject group]: DDC 000 / Computer science, information & general works | DDC 300 / Social sciences
Metadata
Show full item recordDOI & citation
Please use this identifier to cite or link to this item: http://dx.doi.org/10.18725/OPARU-46058
Allen, Nathaniel et al. (2022): Automated mapping and identification of shrub individuals in South Africa's Fynbos biome using drone imagery and deep learning. Open Access Repositorium der Universität Ulm und Technischen Hochschule Ulm. http://dx.doi.org/10.18725/OPARU-46058
Citation formatter >