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3D reconstruction of dynamic vehicles using sparse 3D-laser-scanner and 2D image fusion

机译:使用稀疏3D激光扫描仪和2D图像融合的动态车辆的三维重建

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Map building becomes one of the most interesting research topic in computer vision field nowadays. To acquire accurate large 3D scene reconstructions, 3D laser scanners are recently developed and widely used. They produce accurate but sparse 3D point clouds of the environments. However, 3D reconstruction of rigidly moving objects along side with the large-scale 3D scene reconstruction is still lack of interest in many researches. To achieve a detailed object-level 3D reconstruction, a single scan of point cloud is insufficient due to their sparsity. For example, traditional Iterative Closest Point (ICP) registration technique or its variances are not accurate and robust enough to registered the point clouds, as they are easily trapped into the local minima. In this paper, we propose an 3-Point RANSAC with ICP refinement algorithm to build 3D reconstruction of rigidly moving objects, such as vehicles, using 2D-3D camera setup. Results show that the proposed algorithm can robustly and accurately registered the sparse 3D point cloud.
机译:地图建筑成为如今计算机视野领域最有趣的研究主题之一。为了获得准确的大3D场景重建,最近开发和广泛使用3D激光扫描仪。它们会产生精确但稀疏的3D点云的环境。然而,在许多研究中仍然缺乏刚性移动物体的3D重建沿着大规模3D场景重建缺乏兴趣。为了实现详细的对象级别3D重建,由于其稀疏性,单个点云的扫描不足。例如,传统的迭代最接近点(ICP)登记技术或其差异不准确且鲁棒足以注册点云,因为它们很容易被困到局部最小值。在本文中,我们使用2D-3D相机设置提出了一种三点Ransac与ICP细化算法构建刚性移动物体的3D重建,例如车辆,如车辆。结果表明,该算法可以鲁棒地和准确地登记稀疏的3D点云。

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