3D forest semantic segmentation using multispectral LiDAR and 3D deep learning
Narges Takhtkeshha, Lauris Bocaux, Lassi Ruoppa, Fabio Remondino, Gottfried Mandlburger, Antero Kukko, Juha Hyypp\"a

TL;DR
This paper explores the use of multispectral LiDAR data combined with 3D deep learning models to improve the accuracy of forest component segmentation, demonstrating significant gains over traditional methods.
Contribution
It introduces a novel approach using multispectral LiDAR data and compares multiple deep learning models, highlighting the superior performance of the KPConv model for forest segmentation.
Findings
KPConv achieved the highest accuracy among tested models.
Using all three wavelengths improved segmentation performance significantly.
Multispectral LiDAR enhances automated forest inventory accuracy.
Abstract
Conservation and decision-making regarding forest resources necessitate regular forest inventory. Light detection and ranging (LiDAR) in laser scanning systems has gained significant attention over the past two decades as a remote and non-destructive solution to streamline the labor-intensive and time-consuming procedure of forest inventory. Advanced multispectral (MS) LiDAR systems simultaneously acquire three-dimensional (3D) spatial and spectral information across multiple wavelengths of the electromagnetic spectrum. Consequently, MS-LiDAR technology enables the estimation of both the biochemical and biophysical characteristics of forests. Forest component segmentation is crucial for forest inventory. The synergistic use of spatial and spectral laser information has proven to be beneficial for achieving precise forest semantic segmentation. Thus, this study aims to investigate the…
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