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Safonova, A.
Tabik, S.
Alcaraz-Segura, D.
Rubtsov, A.
Maglinets, Y.
Herrera, F.
2020-01-20T07:14:53Z
2020-01-20T07:14:53Z
2019-03
Safonova, A. Detection of Fir Trees (Abies sibirica) Damaged by the Bark Beetle in Unmanned Aerial Vehicle Images with Deep Learning [Текст] / A. Safonova, S. Tabik, D. Alcaraz-Segura, A. Rubtsov, Y. Maglinets, F. Herrera // Remote Sensing. — 2019. — Т. 11 (№ 6). — С. 643
20724292
https://www.mdpi.com/2072-4292/11/6/643
https://elib.sfu-kras.ru/handle/2311/128709
Invasion of the Polygraphus proximus Blandford bark beetle causes catastrophic damage to forests with firs (Abies sibirica Ledeb) in Russia, especially in Central Siberia. Determining tree damage stage based on the shape, texture and colour of tree crown in unmanned aerial vehicle (UAV) images could help to assess forest health in a faster and cheaper way. However, this task is challenging since (i) fir trees at different damage stages coexist and overlap in the canopy, (ii) the distribution of fir trees in nature is irregular and hence distinguishing between different crowns is hard, even for the human eye. Motivated by the latest advances in computer vision and machine learning, this work proposes a two-stage solution: In a first stage, we built a detection strategy that finds the regions of the input UAV image that are more likely to contain a crown, in the second stage, we developed a new convolutional neural network (CNN) architecture that predicts the fir tree damage stage in each candidate region. Our experiments show that the proposed approach shows satisfactory results on UAV Red, Green, Blue (RGB) images of forest areas in the state nature reserve “Stolby” (Krasnoyarsk, Russia).
multi-class classification
drone
aerial photography
Siberian fir
Siberia
deep-learning
convolutional neural networks
forest health
Detection of Fir Trees (Abies sibirica) Damaged by the Bark Beetle in Unmanned Aerial Vehicle Images with Deep Learning
Journal Article
Published Journal Article
643
28.23.37
2020-01-20T07:14:53Z
10.3390/rs11060643
Институт космических и информационных технологий
Кафедра систем искусственного интеллекта
Remote Sensing
Q1
Q1


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