3D Reconstruction via Camera-lidar (2D) Fusion for Mobile Robots: A Gaussian Splatting Approach

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Pradipta Biswas
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We present a novel 3D reconstruction-based SLAM (Simultaneous Localization and Mapping) approach for robots that leverage multimodal sensory input data, including a camera and a 2D lidar. By integrating these inputs with the gaussian splatting technique, our method significantly
enhances performance over traditional SLAM approaches. Traditional SLAM techniques often struggle with the limitations of monocular vision and fail to accurately map and locate objects in dynamic and cluttered environments. Purely relying on camera to localize the robot and map creation is challenging in the presence of dynamic obstacles in the scene. To address this, we proposed a multimodal sensor fusion based 3D reconstruction. Our approach employs lidar-based localization to achieve precise positioning of both the camera and the robot, while utilizing the gaussian splatting technique for robust environmental mapping and 3D reconstruction. This approach is robust to dynamic obstacles in the scene. We have conducted extensive experiments in various real-world and simulated environments, demonstrating that our method not only outperforms traditional monocular SLAM approaches but also achieves higher accuracy in terms of localization and constructed map. Our results demonstrate substantial improvements in 3D reconstruction for mobile robots, achieving reduced computational load, higher FPS and enhanced scaling accuracy.

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