Path segmentation from point cloud data for autonomous navigation
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Abstract
Autonomous vehicles require in-depth knowledge of their surroundings, making path
segmentation and object detection crucial for determining the feasible region for path planning.
Uniform characteristics of a road portion can be denoted by segmentations. Currently, road segmen tation techniques mostly depend on the quality of camera images under different lighting conditions.
However, Light Detection and Ranging (LiDAR) sensors can provide extremely precise 3D geometry
information about the surroundings, leading to increased accuracy with increased memory consump tion and computational overhead. This paper introduces a novel methodology which combines
LiDAR and camera data for road detection, bridging the gap between 3D LiDAR Point Clouds (PCs).
The assignment of semantic labels to 3D points is essential in various fields, including remote sensing,
autonomous vehicles, and computer vision. This research discusses how to select the most relevant
geometric features for path planning and improve autonomous navigation. An automatic framework
for Semantic Segmentation (SS) is introduced, consisting of four processes: selecting neighborhoods,
extracting classification features, and selecting features. The aim is to make the various components
usable for end users without specialized knowledge by considering simplicity, effectiveness, and
reproducibility. Through an extensive evaluation of different neighborhoods, geometric features,
feature selection methods, classifiers, and benchmark datasets, the outcomes show that selecting the
appropriate neighborhoods significantly develops 3D path segmentation. Additionally, selecting
the right feature subsets can reduce computation time, memory usage, and enhance the quality of
the results.
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autonomous vehicles, path segmentation, LiDAR sensors, 3D geometry information, semantic labels, feature selection, quality of results
Citation
Applied Sciences. 2023, vol. 13, issue 6, art. no. 3977.
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Publikační činnost VŠB-TUO ve Web of Science / Publications of VŠB-TUO in Web of Science
OpenAIRE
Publikační činnost Katedry automatizační techniky a řízení / Publications of Department of Control Systems and Instrumentation (352)
Články z časopisů s impakt faktorem / Articles from Impact Factor Journals
OpenAIRE
Publikační činnost Katedry automatizační techniky a řízení / Publications of Department of Control Systems and Instrumentation (352)
Články z časopisů s impakt faktorem / Articles from Impact Factor Journals