Weakly-supervised semantic segmentation of rails point cloud data using label diffusion
Summary
Fugro collects point cloud data, a form of unordered spatial data, with LiDAR, a laser scanning
system. Using this type of data, detailed maps of the surrounding of railway tracks can be
generated. In order to do this, it is necessary to label all the points in these collected point
clouds. This can be done in multiple ways. In this thesis, we explore the usefulness of Label
Diffusion LiDAR Segmentation (LDLS). We use a panoptic segmentation model on Fugro video
data to perform semantic segmentation and verify its performance on RailSem19 data, an open
source semantic segmentation dataset of railway image data. LDLS uses the output of this
model to diffuse the labels through the point cloud. We show multiple visual results of a few
different configurations. We also give quantitative results of the performance for a subset of
platform points.