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The Application of Iterative Closest Point (ICP) Registration to Improve 3D Terrain Mapping Estimates Using the FLASH 3D LADAR System

机译:迭代最近点(ICP)配准使用FLASH 3D LADAR系统改善3D地形映射估计的应用

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The primary purpose of this research was to develop an effective means of creating a 3D terrain map image (point-cloud) in GPS denied regions from a sequence of co-bore sighted visible and 3D LIDAR images. Both the visible and 3D LADAR cameras were hard mounted to a vehicle. The vehicle was then driven around the streets of an abandoned village used as a training facility by the German Army and imagery was collected. The visible and 3D LADAR images were then fused and 3D registration performed using a variation of the Iterative Closest Point (ICP) algorithm. The ICP algorithm is widely used for various spatial and geometric alignment of 3D imagery producing a set of rotation and translation transformations between two 3D images. ICP rotation and translation information obtain from registering the fused visible and 3D LADAR imagery was then used to calculate the x-y plane, range and intensity (xyzi) coordinates of various structures (building, vehicles, trees etc.) along the driven path. The xyzi coordinates information was then combined to create a 3D terrain map (point-cloud). In this paper, we describe the development and application of 3D imaging techniques (most specifically the ICP algorithm) used to improve spatial, range and intensity estimates of imagery collected during urban terrain mapping using a co-bore sighted, commercially available digital video camera with focal plan of 640x480 pixels and a 3D FLASH LADAR. Various representations of the reconstructed point-clouds for the drive through data will also be presented.
机译:这项研究的主要目的是开发一种有效的方法,该方法从一系列共眼可见的可见和3D LIDAR图像中创建GPS拒绝区域中的3D地形图图像(点云)。可见光和3D LADAR摄像机都固定安装在车辆上。然后,这辆车在一个被德国陆军用作训练设施的废弃村庄的街道上行驶,并收集了图像。然后将可见光和3D LADAR图像融合,并使用迭代最近点(ICP)算法的变体进行3D配准。 ICP算法广泛用于3D图像的各种空间和几何对齐,从而在两个3D图像之间产生一组旋转和平移变换。通过记录融合的可见光和3D LADAR图像获得的ICP旋转和平移信息,然后用于计算沿驱动路径的各种结构(建筑物,车辆,树木等)的x-y平面,范围和强度(​​xyzi)坐标。然后将xyzi坐标信息组合起来以创建3D地形图(点云)。在本文中,我们描述了3D成像技术(最具体而言是ICP算法)的开发和应用,这些技术用于改善城市地形制图过程中使用同眼瞄准的市售数字视频摄像机采集的图像的空间,范围和强度估计640x480像素的焦点计划和3D FLASH LADAR。还将介绍通过数据驱动的重构点云的各种表示形式。

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