3D Reconstruction by Looking: Instantaneous Blind Spot Detector for Indoor SLAM through Mixed Reality
Hanbeom Chang, Jongseong Brad Choi, Chul Min Yeum

TL;DR
This paper introduces the LiMRSF system, a mixed reality framework that enables real-time visualization and error detection in indoor 3D SLAM reconstructions, improving accuracy and reducing rescanning efforts.
Contribution
The novel LiMRSF system allows instant in-situ visualization and blind spot detection during indoor SLAM using mixed reality, enhancing reconstruction quality and efficiency.
Findings
Achieved an F1 score of 75.76% in error detection.
High fidelity of point cloud visualization with SSIM of 0.5619.
Effective real-time identification of blind spots and errors.
Abstract
Indoor SLAM often suffers from issues such as scene drifting, double walls, and blind spots, particularly in confined spaces with objects close to the sensors (e.g. LiDAR and cameras) in reconstruction tasks. Real-time visualization of point cloud registration during data collection may help mitigate these issues, but a significant limitation remains in the inability to in-depth compare the scanned data with actual physical environments. These challenges obstruct the quality of reconstruction products, frequently necessitating revisit and rescan efforts. For this regard, we developed the LiMRSF (LiDAR-MR-RGB Sensor Fusion) system, allowing users to perceive the in-situ point cloud registration by looking through a Mixed-Reality (MR) headset. This tailored framework visualizes point cloud meshes as holograms, seamlessly matching with the real-time scene on see-through glasses, and…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Advanced Image and Video Retrieval Techniques · Advanced Vision and Imaging
MethodsALIGN
