Mapping and Localization Using LiDAR Fiducial Markers
Yibo Liu

TL;DR
This paper introduces a comprehensive framework for LiDAR fiducial marker detection, mapping, and localization, enhancing 3D mapping and AR applications by overcoming the limitations of existing methods.
Contribution
It presents novel intensity image-based markers, an extended detection algorithm for 3D maps, and a new registration method, advancing LiDAR fiducial marker utility and robustness.
Findings
Effective detection of LFMs in various environments
Improved 3D map merging accuracy
Enhanced point cloud registration performance
Abstract
LiDAR sensors are essential for autonomous systems, yet LiDAR fiducial markers (LFMs) lag behind visual fiducial markers (VFMs) in adoption and utility. Bridging this gap is vital for robotics and computer vision but challenging due to the sparse, unstructured nature of 3D LiDAR data and 2D-focused fiducial marker designs. This dissertation proposes a novel framework for mapping and localization using LFMs is proposed to benefit a variety of real-world applications, including the collection of 3D assets and training data for point cloud registration, 3D map merging, Augmented Reality (AR), and many more. First, an Intensity Image-based LiDAR Fiducial Marker (IFM) system is introduced, using thin, letter-sized markers compatible with VFMs. A detection method locates 3D fiducials from intensity images, enabling LiDAR pose estimation. Second, an enhanced algorithm extends detection to 3D…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Remote Sensing and LiDAR Applications · 3D Surveying and Cultural Heritage
