ITSC 2025 Paper Abstract

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Paper VP-VP.60

Reichert, Hannes (University of Applied Sciences Aschaffenburg), Serfling, Benjamin (University of Applied Sciences Aschaffenburg), Schüßler, Elijah (University of Applied Science Aschaffenburg), Turacan, Kerim (University of Applied Sciences Aschaffenburg), Doll, Konrad (University of Applied Sciences Aschaffenburg), Sick, Bernhard (University of Kassel)

Real Time Semantic Segmentation of High Resolution Automotive LiDAR Scans

Scheduled for presentation during the Video Session "On-Demand Video Presentations" (VP-VP), Saturday, November 22, 2025, 08:00−18:00, On-Demand Platform

2025 IEEE 28th International Conference on Intelligent Transportation Systems (ITSC), November 18-21, 2025, Gold Coast, Australia

This information is tentative and subject to change. Compiled on April 2, 2026

Keywords Deep Learning for Scene Understanding and Semantic Segmentation in Autonomous Vehicles, Lidar-based Mapping and Environmental Perception for ITS Applications, Real-time Object Detection and Tracking for Dynamic Traffic Environments

Abstract

In recent studies, numerous previous works emphasize the importance of semantic segmentation of LiDAR data as a critical component to the development of driver-assistance systems and autonomous vehicles. However, many state-of-the-art methods are tested on outdated, lower-resolution LiDAR sensors and struggle with real-time constraints. This study introduces a novel semantic segmentation framework tailored for modern high-resolution LiDAR sensors that addresses both accuracy and real-time processing demands. We propose a novel LiDAR dataset collected by a cutting-edge automotive 128 layer LiDAR in urban traffic scenes. Furthermore, we propose a semantic segmentation method utilizing surface normals as strong input features. Our approach is bridging the gap between cutting-edge research and practical automotive applications. Additionaly, we provide a Robot Operating System (ROS2) implementation that we operate on our research vehicle. Our dataset and code are publicly available: https://github.com/kav-institute/SemanticLiDAR.

 

 

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