Classifying the Degree of Bark Beetle-Induced Damage on Fir (Abies mariesii) Forests, from UAV-Acquired RGB Images

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Leidemer, T.; Gonroudobou, O.B.H.; Nguyen, H.T.; Ferracini, C.; Burkhard, B. et al.: Classifying the Degree of Bark Beetle-Induced Damage on Fir (Abies mariesii) Forests, from UAV-Acquired RGB Images. In: Computation : open access journal 10 (2022), Nr. 4, 63. DOI: https://doi.org/10.3390/computation10040063

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To cite the version in the repository, please use this identifier: https://doi.org/10.15488/12906

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Sum total of downloads: 78




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Abstract: 
Bark beetle outbreaks are responsible for the loss of large areas of forests and in recent years they appear to be increasing in frequency and magnitude as a result of climate change. The aim of this study is to develop a new standardized methodology for the automatic detection of the degree of damage on single fir trees caused by bark beetle attacks using a simple GIS-based model. The classification approach is based on the degree of tree canopy defoliation observed (white pixels) in the UAV-acquired very high resolution RGB orthophotos. We defined six degrees (categories) of damage (healthy, four infested levels and dead) based on the ratio of white pixel to the total number of pixels of a given tree canopy. Category 1: <2.5% (no defoliation); Category 2: 2.5–10% (very low defoliation); Category 3: 10–25% (low defoliation); Category 4: 25–50% (medium defoliation); Category 5: 50–75% (high defoliation), and finally Category 6: >75% (dead). The definition of “white pixel” is crucial, since light conditions during image acquisition drastically affect pixel values. Thus, whiteness was defined as the ratio of red pixel value to the blue pixel value of every single pixel in relation to the ratio of the mean red and mean blue value of the whole orthomosaic. The results show that in an area of 4 ha, out of the 1376 trees, 277 were healthy, 948 were infested (Cat 2, 628; Cat 3, 244; Cat 4, 64; Cat 5, 12), and 151 were dead (Cat 6). The validation led to an average precision of 62%, with Cat 1 and Cat 6 reaching a precision of 73% and 94%, respectively. © 2022 by the authors. Licensee MDPI, Basel, Switzerland.
License of this version: CC BY 4.0 Unported
Document Type: Article
Publishing status: publishedVersion
Issue Date: 2022
Appears in Collections:Naturwissenschaftliche Fakultät

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pos. country downloads
total perc.
1 image of flag of United States United States 31 39.74%
2 image of flag of Germany Germany 27 34.62%
3 image of flag of China China 8 10.26%
4 image of flag of United Kingdom United Kingdom 2 2.56%
5 image of flag of Russian Federation Russian Federation 1 1.28%
6 image of flag of Romania Romania 1 1.28%
7 image of flag of Peru Peru 1 1.28%
8 image of flag of Latvia Latvia 1 1.28%
9 image of flag of Italy Italy 1 1.28%
10 image of flag of Indonesia Indonesia 1 1.28%
    other countries 4 5.13%

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