Learning techniques for autonomous drone based hyperspectral analysis of forest vegetation

Acronym

ML4DRONE

Description of the granted funding

Climate change is causing great threat to the boreal forests. We propose a methodology that integrates the latest innovations in drones, hyperspectral (HS) imaging, and machine learning to implement an efficient and precise framework for forest health monitoring. To solve the problem of generating extensive labeled training datasets for deep learning, we propose a novel approach producing simulated HS drone image datasets of forests with selected stress factors and using those to train machine learning models for vegetation analysis. We will use the method to optimize the drone procedures in forest health analysis, use simulated data in transfer learning, and validate the results using the existing and new in-situ datasets collected using drone systems flying above and inside of forests. We believe that the proposed approach will result in a breakthrough in usability of machine learning methods in drone and HS imaging based forest health and disturbance analysis.
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Starting year

2023

End year

2027

Granted funding


Eija Honkavaara Orcid -palvelun logo
599 129 €

Funder

Research Council of Finland

Funding instrument

Academy projects

Other information

Funding decision number

357380

Fields of science

Computer and information sciences

Research fields

Laskennallinen data-analyysi

Identified topics

forest, forestry