Developing drone-based hyperspectral imagery for forest infestation detection
Reference number | |
Coordinator | Sveriges Lantbruksuniversitet - Sveriges Lantbruksuniversitet SLU Inst f skogl resurshushushållning |
Funding from Vinnova | SEK 497 290 |
Project duration | August 2022 - December 2023 |
Status | Completed |
Venture | Individual mobility and increased attraction value for research-based competence |
Call | Mobility for innovation, learning and knowledge exchange 2022 |
Important results from the project
We fulfilled the objective of the project to develop UAV-based hyperspectral imagery for the early detection of bark beetle infestations. We developed the methodology including data acquisition, spectral analysis, and proposed better models for infestation identification. We also fulfilled the objective of scientific mobility and research collaboration with the Finnish Geospatial Research Institute (FGI), by Dr. Langning Huo working at FGI for six months on the same research topic.
Expected long term effects
We analyzed the spectral signatures of the healthy and infested trees and found that the crown spectrum in the green shoulder and red edge regions differed the most after the infestation. Based on this finding, we proposed new vegetation indices that can improve the identification of infestations at the early stage. We also simplified the vegetation indices adapted for multispectral sensors, which are cheaper and easier to collect data from than hyperspectral sensors.
Approach and implementation
This project used state-of-the-art UAV-based hyperspectral sensors with high resolution and high frequency. The research design can help to sufficiently answer the scientific question of how early infestations can be identified. The hyperspectral images were processed and calibrated with high quality, supporting the spectral analysis. We concluded the most informative bands from hyperspectral sensors and proposed the implementation on multispectral sensors in practical use of forest monitoring.