ROS 2-Based LiDAR Perception Framework for Mobile Robots in Dynamic Production Environments, Utilizing Synthetic Data Generation, Transformation-Equivariant 3D Detection and Multi-Object Tracking
Lukas Bergs, Tan Chung, Marmik Thakkar, Alexander Moriz, Amon Göppert + 2 more
TLDR
This paper introduces a ROS 2-based LiDAR perception framework for mobile robots, using synthetic data, 3D detection, and multi-object tracking.
Key contributions
- Presents a ROS 2-based LiDAR perception framework for mobile robots in dynamic industrial settings.
- Integrates synthetic data training with transformation-equivariant 3D detection.
- Leverages multi-object tracking using center poses for enhanced robustness.
- Achieves 91.12% Higher Order Tracking Accuracy in dynamic environments.
Why it matters
This framework addresses key limitations in real-world data dependency and noise robustness for robot perception. It significantly enhances the robustness and versatility of LiDAR systems for industrial mobile manipulators, crucial for dynamic production environments.
Original Abstract
Adaptive robots in dynamic production environments require robust perception capabilities, including 6D pose estimation and multi-object tracking. To address limitations in real-world data dependency, noise robustness, and spatiotemporal consistency, a LiDAR framework based on the Robot Operating System integrating a synthetic-data-trained Transformation-Equivariant 3D Detection with multi-object-tracking leveraging center poses is proposed. Validated across 72 scenarios with motion capture technology, overall results yield an Intersection over Union of 62.6% for standalone pose estimation, rising to 83.12% with multi-object-tracking integration. Our LiDAR-based framework achieves 91.12% of Higher Order Tracking Accuracy, advancing robustness and versatility of LiDAR-based perception systems for industrial mobile manipulators.
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