BIMCaP: BIM-based AI-supported LiDAR-Camera Pose Refinement
Torres, Miguel Arturo Vega, Ribic, Anna, de Soto, Borja García, Borrmann, André
–arXiv.org Artificial Intelligence
This paper introduces BIMCaP, a novel method to integrate mobile 3D sparse LiDAR data and camera measurements with pre-existing building information models (BIMs), enhancing fast and accurate indoor mapping with affordable sensors. BIMCaP refines sensor poses by leveraging a 3D BIM and employing a bundle adjustment technique to align real-world measurements with the model. Experiments using real-world open-access data show that BIMCaP achieves superior accuracy, reducing translational error by over 4 cm compared to current state-of-the-art methods. This advancement enhances the accuracy and cost-effectiveness of 3D mapping methodologies like SLAM. BIMCaP's improvements benefit various fields, including construction site management and emergency response, by providing up-to-date, aligned digital maps for better decision-making and productivity.
arXiv.org Artificial Intelligence
Dec-4-2024
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