Automated cross-sensor registration, orthorectification and geopositioning using LIDAR digital elevation models

M. D. Pritt, Michael Gribbons, Kevin J. LaTourette
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引用次数: 12

Abstract

Cross-sensor image registration, orthorectification, and geopositioning of imagery are well-known problems whose solutions are difficult, if not impossible, to automate. Registration of radar to optical imagery typically requires a manual solution, as does the registration of imagery over rugged terrain or urban areas, where foreshortening and layover present formidable obstacles to successful automation. We have developed an automated solution that is based on the registration of imagery to high-precision digital elevation models (DEMs) derived from Lidar data. The key idea is the generation of a simulated image using Lidar data, the image camera model and the illumination conditions. The simulated image is then registered to the actual image with normalized cross-correlation methods. The result is an effective and completely automated technique for registering imagery to DEMs. It has been shown to work with BuckEye Lidar, ALIRT Lidar, commercial satellite imagery and commercial synthetic aperture radar imagery over diverse terrain types, including mountains, cities, and forests. It provides an automated solution to many difficult geospatial problems, including cross-sensor registration of radar and optical imagery, image registration over rugged terrain, geopositioning of imagery and orthorectification. Its use of Lidar enables it to handle three-dimensional features that are foreshortened or laid over in different directions. Its use of simulated imagery enables it to bypass the problem of disparate features in cross-sensor registration. Statistical analyses of the registration accuracy are presented along with results on commercial satellite imagery and Lidar data over Iraq, Afghanistan, Haiti and the U.S.
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使用激光雷达数字高程模型进行自动交叉传感器配准、正校正和地理定位
跨传感器图像配准、正校正和图像的地理定位是众所周知的问题,其解决方案即使不是不可能,也很难实现自动化。雷达对光学图像的配准通常需要手动解决方案,在崎岖地形或城市地区的图像配准也是如此,在这些地区,缩短和中途停留对成功的自动化存在巨大障碍。我们开发了一种自动化解决方案,该解决方案基于图像配准到来自激光雷达数据的高精度数字高程模型(dem)。关键思想是利用激光雷达数据、图像相机模型和照明条件生成模拟图像。然后用归一化互相关方法将模拟图像配准到实际图像。结果是一个有效的和完全自动化的技术注册图像到dem。它已被证明可以与七叶树激光雷达、ALIRT激光雷达、商业卫星图像和商业合成孔径雷达图像一起工作,覆盖各种地形类型,包括山区、城市和森林。它为许多困难的地理空间问题提供了自动化解决方案,包括雷达和光学图像的跨传感器配准,崎岖地形上的图像配准,图像的地理定位和正校正。激光雷达的使用使它能够处理被缩短或在不同方向上铺设的三维特征。它对模拟图像的使用使其能够绕过跨传感器配准中不同特征的问题。在伊拉克、阿富汗、海地和美国的商业卫星图像和激光雷达数据上,给出了配准精度的统计分析结果
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Automated cross-sensor registration, orthorectification and geopositioning using LIDAR digital elevation models Gray-level co-occurrence matrices as features in edge enhanced images Rock image segmentation using watershed with shape markers Adaptive selection of visual and infra-red image fusion rules Tactical geospatial intelligence from full motion video
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