Multispectral airborne laser scanning dataset for tree species classification: MS-ALS-SPECIES
Matti Hyypp\"a, Klaara Salolahti, Eric Hyypp\"a, Xiaowei Yu, Josef Taher, Leena Matikainen, Matti Lehtom\"aki, Paula Litkey, Teemu Hakala, Harri Kaartinen, Juha Hyypp\"a, Antero Kukko

TL;DR
This paper introduces an open multispectral airborne laser scanning dataset for tree species classification, enabling improved biodiversity mapping and benchmarking of machine learning methods in boreal forests.
Contribution
It provides a detailed, publicly available dataset with high-quality, field-validated reference data for nine tree species, and analyzes classification accuracy related to tree height.
Findings
High classification accuracy for certain species using multispectral data.
Point transformer models perform well on small trees and minority species.
The dataset supports benchmarking and development of new classification methods.
Abstract
The shift from stand-level to individual-tree-level forest assessments supports improved biodiversity mapping, particularly in boreal ecosystems where tree species like aspen (Populus tremula L.) play a keystone role. While airborne laser scanning (ALS) is the standard for such inventories, a major limitation is the small number of publicly available ALS datasets containing high-quality, field-validated reference data. Furthermore, open multispectral ALS datasets with high-quality field reference data are completely lacking despite the potential of multispectral ALS data for tree species classification. This paper presents and details an open multispectral ALS dataset used in a recent international benchmarking study of machine learning and deep learning methods for tree species classification by Taher et al. (2026). The dataset comprises 6326 segment-level point clouds of individual…
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