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LiDAR change detection using building models

机译:使用建筑模型进行LiDAR变化检测

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摘要

Terrestrial LiDAR scans of building models collected with a FARO Focus3D and a RIEGL VZ-400 were used to investigate point-to-point and model-to-model LiDAR change detection. LiDAR data were scaled, decimated, and georegistered to mimic real world airborne collects. Two physical building models were used to explore various aspects of the change detection process. The first model was a l:250-scale representation of the Naval Postgraduate School campus in Monterey, CA, constructed from Lego blocks and scanned in a laboratory setting using both the FARO and RIEGL. The second model at l:8-scale consisted of large cardboard boxes placed outdoors and scanned from rooftops of adjacent buildings using the RIEGL. A point-to-point change detection scheme was applied directly to the point-cloud datasets. In the model-to-model change detection scheme, changes were detected by comparing Digital Surface Models (DSMs). The use of physical models allowed analysis of effects of changes in scanner and scanning geometry, and performance of the change detection methods on different types of changes, including building collapse or subsistence, construction, and shifts in location. Results indicate that at low false-alarm rates, the point-to-point method slightly outperforms the model-to-model method. The point-to-point method is less sensitive to misregistration errors in the data. Best results are obtained when the baseline and change datasets are collected using the same LiDAR system and collection geometry.
机译:使用FARO Focus3D和RIEGL VZ-400收集的建筑模型的地面LiDAR扫描用于研究点对点和模型间LiDAR变化检测。 LiDAR数据经过缩放,抽取和地理注册,以模拟现实世界中的机载收集物。使用两个物理建筑模型来探索变更检测过程的各个方面。第一个模型是加利福尼亚州蒙特雷的海军研究生院校园的1:250比例表示,它是由乐高积木构成的,并在实验室环境中使用FARO和RIEGL进行了扫描。第二个比例为1:8的模型由放置在室外的大型纸板箱组成,并使用RIEGL从相邻建筑物的屋顶进行扫描。点对点变化检测方案直接应用于点云数据集。在模型到模型的更改检测方案中,通过比较数字表面模型(DSM)来检测更改。物理模型的使用允许分析扫描仪和扫描几何形状变化的影响,以及变化检测方法对不同类型变化的性能,包括建筑物倒塌或生存,构造和位置变化。结果表明,在低虚警率下,点对点方法略胜于模型对模型方法。点对点方法对数据中的配准错误不太敏感。使用相同的LiDAR系统和收集几何体收集基线和变更数据集时,可获得最佳结果。

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