Automatic registration of LIDAR and optical images of urban scenes

Andrew Mastin, J. Kepner, John W. Fisher III
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引用次数: 194

Abstract

Fusion of 3D laser radar (LIDAR) imagery and aerial optical imagery is an efficient method for constructing 3D virtual reality models. One difficult aspect of creating such models is registering the optical image with the LIDAR point cloud, which is characterized as a camera pose estimation problem. We propose a novel application of mutual information registration methods, which exploits the statistical dependency in urban scenes of optical appearance with measured LIDAR elevation. We utilize the well known downhill simplex optimization to infer camera pose parameters. We discuss three methods for measuring mutual information between LIDAR imagery and optical imagery. Utilization of OpenGL and graphics hardware in the optimization process yields registration times dramatically lower than previous methods. Using an initial registration comparable to GPS/INS accuracy, we demonstrate the utility of our algorithm with a collection of urban images and present 3D models created with the fused imagery.
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城市场景激光雷达和光学图像的自动配准
三维激光雷达(LIDAR)图像与航空光学图像融合是构建三维虚拟现实模型的有效方法。创建这样的模型的一个困难方面是注册光学图像与激光雷达点云,其特点是相机姿态估计问题。我们提出了一种新的互信息配准方法,该方法利用了城市场景光学外观与测量激光雷达高程的统计相关性。我们利用众所周知的下坡单纯形优化来推断相机姿态参数。讨论了三种测量激光雷达图像与光学图像互信息的方法。在优化过程中使用OpenGL和图形硬件使注册时间大大低于以前的方法。使用与GPS/INS精度相当的初始配准,我们用一组城市图像展示了我们的算法的实用性,并展示了用融合图像创建的3D模型。
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