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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >3D BUILDING CHANGE DETECTION BETWEEN CURRENT VHR IMAGES AND PAST LIDAR DATA
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3D BUILDING CHANGE DETECTION BETWEEN CURRENT VHR IMAGES AND PAST LIDAR DATA

机译:当前VHR图像和过去的激光数据之间的3D建筑变化检测

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Change detection is an essential step to locate the area where an old model should be updated. With high density and accuracy, LiDAR data is often used to create a 3D city model. However, updating LiDAR data at state or nation level often takes years. Very high resolution (VHR) images with high updating rate is therefore an option for change detection. This paper provides a novel and efficient approach to derive pixel-based building change detection between past LiDAR and new VHR images. The proposed approach aims notably at reducing false alarms of changes near edges. For this purpose, LiDAR data is used to supervise the process of finding stereo pairs and derive the changes directly. This paper proposes to derive three possible heights (so three DSMs) by exploiting planar segments from LiDAR data. Near edges, the up to three possible heights are transformed into discrete disparities. A optimal disparity is selected from a reasonable and computational efficient range centered on them. If the optimal disparity is selected, but still the stereo pair found is wrong, a change has been found. A Markov random field (MRF) with built-in edge awareness from images is designed to find optimal disparity. By segmenting the pixels into plane and edge segments, the global optimization problem is split into many local ones which makes the optimization very efficient. Using an optimization and a consecutive occlusion consistency check, the changes are derived from stereo pairs having high color difference. The algorithm is tested to find changes in an urban areas in the city of Amersfoort, the Netherlands. The two different test cases show that the algorithm is indeed efficient. The optimized disparity images have sharp edges along those of images and false alarms of changes near or on edges and occlusions are largely reduced.
机译:更改检测是确定旧模型应更新区域的必不可少的步骤。 LiDAR数据具有很高的密度和准确性,通常用于创建3D城市模型。但是,在州或国家/地区级别更新LiDAR数据通常需要花费数年时间。因此,具有高更新率的超高分辨率(VHR)图像是更改检测的选项。本文提供了一种新颖有效的方法,可以在过去的LiDAR和新的VHR图像之间导出基于像素的建筑物变化检测。所提出的方法尤其旨在减少边缘附近的变化的错误警报。为此,LiDAR数据用于监督寻找立体声对并直接导出变化的过程。本文建议通过利用LiDAR数据中的平面分段来推导三个可能的高度(即三个DSM)。在边缘附近,最多三个可能的高度转换为离散的视差。从以它们为中心的合理且计算有效的范围内选择最佳视差。如果选择了最佳视差,但仍然发现立体声对错误,则表明已进行更改。具有图像边缘识别功能的马尔可夫随机场(MRF)旨在找到最佳视差。通过将像素分为平面和边缘部分,全局优化问题被分为许多局部问题,这使得优化非常有效。使用优化和连续遮挡一致性检查,从具有高色差的立体对中得出更改。对算法进行了测试,以发现荷兰阿默斯福特市市区内的变化。两个不同的测试案例表明该算法确实有效。优化的视差图像沿图像的边缘具有锐利的边缘,并且在边缘附近或边缘发生变化的错误警报大大减少了遮挡。

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