Comparison of Deep Neural Networks in the Classification of Bark Beetle-Induced Spruce Damage Using UAS Images
Turkulainen, E., Honkavaara, E., Näsi, R., Oliveira, R. A., Hakala, T., Junttila, S., Karila, K., Koivumäki, N., Pelto-Arvo, M., Tuviala, J., Östersund, M., Pölönen, I., & Lyytikäinen-Saarenmaa, P. (2023). Comparison of Deep Neural Networks in the Classification of Bark Beetle-Induced Spruce Damage Using UAS Images. Remote Sensing, 15(20), Article 4928. https://doi.org/10.3390/rs15204928
Published in
Remote SensingAuthors
Date
2023Discipline
TietotekniikkaComputing, Information Technology and MathematicsLaskennallinen tiedeMathematical Information TechnologyComputing, Information Technology and MathematicsComputational ScienceCopyright
© 2023 by the authors. Licensee MDPI, Basel, Switzerland.
The widespread tree mortality caused by the European spruce bark beetle (Ips typographus L.) is a significant concern for Norway spruce-dominated (Picea abies H. Karst) forests in Europe and there is evidence of increases in the affected areas due to climate warming. Effective forest monitoring methods are urgently needed for providing timely data on tree health status for conducting forest management operations that aim to prepare and mitigate the damage caused by the beetle. Unoccupied aircraft systems (UASs) in combination with machine learning image analysis have emerged as a powerful tool for the fast-response monitoring of forest health. This research aims to assess the effectiveness of deep neural networks (DNNs) in identifying bark beetle infestations at the individual tree level from UAS images. The study compares the efficacy of RGB, multispectral (MS), and hyperspectral (HS) imaging, and evaluates various neural network structures for each image type. The findings reveal that MS and HS images perform better than RGB images. A 2D-3D-CNN model trained on HS images proves to be the best for detecting infested trees, with an F1-score of 0.759, while for dead and healthy trees, the F1-scores are 0.880 and 0.928, respectively. The study also demonstrates that the tested classifier networks outperform the state-of-the-art You Only Look Once (YOLO) classifier module, and that an effective analyzer can be implemented by integrating YOLO and the DNN classifier model. The current research provides a foundation for the further exploration of MS and HS imaging in detecting bark beetle disturbances in time, which can play a crucial role in forest management efforts to combat large-scale outbreaks. The study highlights the potential of remote sensing and machine learning in monitoring forest health and mitigating the impacts of biotic stresses. It also offers valuable insights into the effectiveness of DNNs in detecting bark beetle infestations using UAS-based remote sensing technology.
...
Publisher
MDPI AGISSN Search the Publication Forum
2072-4292Keywords
bark beetle drone deep learning hyperspectral imaging image classification multispectral imaging object detection RGB tree health UAS miehittämättömät ilma-alukset metsäkuusi koneoppiminen kirjanpainaja (kaarnakuoriaiset) neuroverkot spektrikuvaus syväoppiminen hyperspektrikuvantaminen hyönteistuhot metsätuhot kaukokartoitus
Publication in research information system
https://converis.jyu.fi/converis/portal/detail/Publication/193542608
Metadata
Show full item recordCollections
License
Related items
Showing items with similar title or keywords.
-
Estimating Tree Health Decline Caused by Ips typographus L. from UAS RGB Images Using a Deep One-Stage Object Detection Neural Network
Kanerva, Heini; Honkavaara, Eija; Näsi, Roope; Hakala, Teemu; Junttila, Samuli; Karila, Kirsi; Koivumäki, Niko; Alves Oliveira, Raquel; Pelto-Arvo, Mikko; Pölönen, Ilkka; Tuviala, Johanna; Östersund, Madeleine; Lyytikäinen-Saarenmaa, Päivi (MDPI, 2022)Various biotic and abiotic stresses are causing decline in forest health globally. Presently, one of the major biotic stress agents in Europe is the European spruce bark beetle (Ips typographus L.) which is increasingly ... -
Tree species classification of drone hyperspectral and RGB imagery with deep learning convolutional neural networks
Nezami, Somayeh; Khoramshahi, Ehsan; Nevalainen, Olli; Pölönen, Ilkka; Honkavaara, Eija (MDPI AG, 2020)Interest in drone solutions in forestry applications is growing. Using drones, datasets can be captured flexibly and at high spatial and temporal resolutions when needed. In forestry applications, fundamental tasks include ... -
Estimating Grass Sward Quality and Quantity Parameters Using Drone Remote Sensing with Deep Neural Networks
Karila, Kirsi; Alves Oliveira, Raquel; Ek, Johannes; Kaivosoja, Jere; Koivumäki, Niko; Korhonen, Panu; Niemeläinen, Oiva; Nyholm, Laura; Näsi, Roope; Pölönen, Ilkka; Honkavaara, Eija (MDPI AG, 2022)The objective of this study is to investigate the potential of novel neural network architectures for measuring the quality and quantity parameters of silage grass swards, using drone RGB and hyperspectral images (HSI), ... -
Drivers of Spruce Bark Beetle (Ips typographus) Infestations on Downed Trees after Severe Windthrow
Hroššo, Branislav; Mezei, Pavel; Potterf, Mária; Majdák, Andrei; Blaženec, Miroslav; Korolyova N; Jakuš, Rastislav (MDPI, 2020)Research Highlights: Bark beetles are important agents of disturbance regimes in temperate forests, and specifically in a connected wind-bark beetle disturbance system. Large-scale windthrows trigger population growth of ... -
Trajectory Design and Resource Allocation for Multi-UAV Networks : Deep Reinforcement Learning Approaches
Chang, Zheng; Deng, Hengwei; You, Li; Min, Geyong; Garg, Sahil; Kaddoum, Georges (Institute of Electrical and Electronics Engineers (IEEE), 2022)The future mobile communication system is expected to provide ubiquitous connectivity and unprecedented services over billions of devices. The unmanned aerial vehicle (UAV), which is prominent in its flexibility and low ...