Monitoring Structural Development of Trees Using Laser Scanning Time Series

Description of the granted funding

Scientific research and decision-making face significant challenges due to the lack of precise and efficient methods for measuring forests, particularly sample plots. These plots are essential for studying ecosystems, advancing silviculture, practicing forestry, and supporting national forest inventories, which underpin policy decisions and international reporting. While laser scanning (LS) systems—terrestrial, mobile, and drone-based—have been used to automate sample plot measurements, the time saved in field data collection often comes at the cost of lengthy processing times. We develop a novel approach that combines repetitive LS measurements, deep learning techniques, and automated LS data collection to streamline sample plot monitoring. This solution accelerates data collection and processing, providing an efficient method for long-term forest monitoring to support both scientific research and practical applications.
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Starting year

2026

End year

2030

Granted funding

Mikko Vastaranta Orcid -palvelun logo
595 727 €

Funder

Research Council of Finland

Funding instrument

Academy projects

Decision maker

Scientific Council for Biosciences, Health and the Environment
10.06.2026

Other information

Funding decision number

376270

Fields of science

Forestry

Research fields

Metsätieteet