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Remote Sensing, volume 15, issue 18, pages 4394

Unveiling the Potential of Drone-Borne Optical Imagery in Forest Ecology: A Study on the Recognition and Mapping of Two Evergreen Coniferous Species

Korznikov Kirill 1, 2
Kislov Dmitriy 1
Petrenko Tatyana 1
Dzizyurova Violetta 1, 3
Doležal Jiří 2, 4
Altman Jan 2, 5
2
 
Institute of Botany of the CAS, 379 01 Třeboň, Czech Republic
4
 
Faculty of Science, University of South Bohemia, 370 05 České Budějovice, Czech Republic
5
 
Faculty of Forestry and Wood Sciences, Czech University of Life Sciences Prague, 165 21 Prague, Czech Republic
Publication typeJournal Article
Publication date2023-09-07
Journal: Remote Sensing
Quartile SCImago
Q1
Quartile WOS
Q1
Impact factor5
ISSN20724292
General Earth and Planetary Sciences
Abstract

The use of drone-borne imagery for tree recognition holds high potential in forestry and ecological studies. Accurate species identification and crown delineation are essential for tasks such as species mapping and ecological assessments. In this study, we compared the results of tree crown recognition across three neural networks using high-resolution optical imagery captured by an affordable drone with an RGB camera. The tasks included the detection of two evergreen coniferous tree species using the YOLOv8 neural network, the semantic segmentation of tree crowns using the U-Net neural network, and the instance segmentation of individual tree crowns using the Mask R-CNN neural network. The evaluation highlighted the strengths and limitations of each method. YOLOv8 demonstrated effective multiple-object detection (F1-score—0.990, overall accuracy (OA)—0.981), enabling detailed analysis of species distribution. U-Net achieved less accurate pixel-level segmentation for both species (F1-score—0.981, OA—0.963). Mask R-CNN provided precise instance-level segmentation, but with lower accuracy (F1-score—0.902, OA—0.822). The choice of a tree crown recognition method should align with the specific research goals. Although YOLOv8 and U-Net are suitable for mapping and species distribution assessments, Mask R-CNN offers more detailed information regarding individual tree crowns. Researchers should carefully consider their objectives and the required level of accuracy when selecting a recognition method. Solving practical problems related to tree recognition requires a multi-step process involving collaboration among experts with diverse skills and experiences, adopting a biology- and landscape-oriented approach when applying remote sensing methods to enhance recognition results. We recommend capturing images in cloudy weather to increase species recognition accuracy. Additionally, it is advisable to consider phenological features when selecting optimal seasons, such as early spring or late autumn, for distinguishing evergreen conifers in boreal or temperate zones.

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Korznikov K. et al. Unveiling the Potential of Drone-Borne Optical Imagery in Forest Ecology: A Study on the Recognition and Mapping of Two Evergreen Coniferous Species // Remote Sensing. 2023. Vol. 15. No. 18. p. 4394.
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Korznikov K., Kislov D., Petrenko T., Dzizyurova V., Doležal J., KRESTOV P. V., Altman J. Unveiling the Potential of Drone-Borne Optical Imagery in Forest Ecology: A Study on the Recognition and Mapping of Two Evergreen Coniferous Species // Remote Sensing. 2023. Vol. 15. No. 18. p. 4394.
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TY - JOUR
DO - 10.3390/rs15184394
UR - https://doi.org/10.3390%2Frs15184394
TI - Unveiling the Potential of Drone-Borne Optical Imagery in Forest Ecology: A Study on the Recognition and Mapping of Two Evergreen Coniferous Species
T2 - Remote Sensing
AU - Korznikov, Kirill
AU - Kislov, Dmitriy
AU - Petrenko, Tatyana
AU - Dzizyurova, Violetta
AU - Doležal, Jiří
AU - KRESTOV, PAVEL V.
AU - Altman, Jan
PY - 2023
DA - 2023/09/07 00:00:00
PB - Multidisciplinary Digital Publishing Institute (MDPI)
SP - 4394
IS - 18
VL - 15
SN - 2072-4292
ER -
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@article{2023_Korznikov,
author = {Kirill Korznikov and Dmitriy Kislov and Tatyana Petrenko and Violetta Dzizyurova and Jiří Doležal and PAVEL V. KRESTOV and Jan Altman},
title = {Unveiling the Potential of Drone-Borne Optical Imagery in Forest Ecology: A Study on the Recognition and Mapping of Two Evergreen Coniferous Species},
journal = {Remote Sensing},
year = {2023},
volume = {15},
publisher = {Multidisciplinary Digital Publishing Institute (MDPI)},
month = {sep},
url = {https://doi.org/10.3390%2Frs15184394},
number = {18},
pages = {4394},
doi = {10.3390/rs15184394}
}
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Korznikov, Kirill, et al. “Unveiling the Potential of Drone-Borne Optical Imagery in Forest Ecology: A Study on the Recognition and Mapping of Two Evergreen Coniferous Species.” Remote Sensing, vol. 15, no. 18, Sep. 2023, p. 4394. https://doi.org/10.3390%2Frs15184394.
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