Abstract:
In this paper, an approach to the semantic segmentation of 3D LiDAR point clouds obtained from natural scenes
is introduced. Using a state-of-the-art projection-based semantic segmentation model as the core segmentation
network, several recent advances in projection-based 3D semantic segmentation methods are aggregated into a
single model. These adaptions include: scan unfolding, soft-kNN post-processing, and multi-projection fusion.
A novel Naïve Bayesian approach to multi-projection fusion which weights class probabilities based on the
outputs of the base classifiers is proposed to further increase robustness.
Quantitative and qualitative evaluations on several datasets, including scenes from both urban and natural
environments; show that aggregating these adaptions into a single model can further improve the accuracy of
state-of-the-art projection-based approaches. Finally, it is demonstrated that the novel Naïve Bayesian approach
to multi-projection fusion addresses a number of the challenges inherent to natural data while also improving
results on urban data.