Unsupervised deep learning for semantic segmentation of multispectral LiDAR forest point clouds
Lassi Ruoppa, Oona Oinonen, Josef Taher, Matti Lehtom\"aki, Narges Takhtkeshha, Antero Kukko, Harri Kaartinen, Juha Hyypp\"a

TL;DR
This paper introduces GrowSP-ForMS, an unsupervised deep learning method for semantic segmentation of multispectral LiDAR forest point clouds, significantly improving leaf-wood separation accuracy without requiring labeled data.
Contribution
The study presents a novel unsupervised deep learning approach tailored for multispectral ALS point clouds, enhancing leaf-wood separation performance over traditional methods.
Findings
Achieved 84.3% accuracy and 69.6% mIoU on test data.
Outperformed traditional unsupervised methods significantly.
MS data improved segmentation accuracy by 5.6 percentage points.
Abstract
Point clouds captured with laser scanning systems from forest environments can be utilized in a wide variety of applications within forestry and plant ecology, such as the estimation of tree stem attributes, leaf angle distribution, and above-ground biomass. However, effectively utilizing the data in such tasks requires the semantic segmentation of the data into wood and foliage points, also known as leaf-wood separation. The traditional approach to leaf-wood separation has been geometry- and radiometry-based unsupervised algorithms, which tend to perform poorly on data captured with airborne laser scanning (ALS) systems, even with a high point density. While recent machine and deep learning approaches achieve great results even on sparse point clouds, they require manually labeled training data, which is often extremely laborious to produce. Multispectral (MS) information has been…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Remote Sensing in Agriculture · 3D Surveying and Cultural Heritage
