A Real-Time Global Re-Localization Framework for a 3D LiDAR-Based Navigation System.

Sensors (Basel)

State Key Laboratory of Mechanical System and Vibration, School of Mechanical Engineering, Shanghai Jiao Tong University, Shanghai 200240, China.

Published: September 2024

AI Article Synopsis

  • Place recognition is crucial for helping robots navigate using pre-built point cloud maps, but existing methods can only recognize places they have visited and require matching sensors, making them slow.
  • This paper proposes a new global re-localization framework that uses a two-stage approach: an offline stage to build a template library from virtual LiDAR scans and an online stage for efficient matching through a cascade method.
  • The framework achieves high accuracy (99% success in simulations) and good speed (approximately 11 Hz) in re-localizing robots, even in unfamiliar environments and when using heterogeneous sensor data.

Article Abstract

Place recognition is widely used to re-localize robots in pre-built point cloud maps for navigation. However, current place recognition methods can only be used to recognize previously visited places. Moreover, these methods are limited by the requirement of using the same types of sensors in the re-localization process and the process is time consuming. In this paper, a template-matching-based global re-localization framework is proposed to address these challenges. The proposed framework includes an offline building stage and an online matching stage. In the offline stage, virtual LiDAR scans are densely resampled in the map and rotation-invariant descriptors can be extracted as templates. These templates are hierarchically clustered to build a template library. The map used to collect virtual LiDAR scans can be built either by the robot itself previously, or by other heterogeneous sensors. So, an important feature of the proposed framework is that it can be used in environments that have never been visited by the robot before. In the online stage, a cascade coarse-to-fine template matching method is proposed for efficient matching, considering both computational efficiency and accuracy. In the simulation with 100 K templates, the proposed framework achieves a 99% success rate and around 11 Hz matching speed when the re-localization error threshold is 1.0 m. In the validation on The Newer College Dataset with 40 K templates, it achieves a 94.67% success rate and around 7 Hz matching speed when the re-localization error threshold is 1.0 m. All the results show that the proposed framework has high accuracy, excellent efficiency, and the capability to achieve global re-localization in heterogeneous maps.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11478482PMC
http://dx.doi.org/10.3390/s24196288DOI Listing

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