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Integrated Change Detection and Classification in Urban Areas Based on Airborne Laser Scanning Point Clouds

机译:基于机载激光扫描点云的城市区域变化综合检测与分类

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摘要

This paper suggests a new approach for change detection (CD) in 3D point clouds. It combines classification and CD in one step using machine learning. The point cloud data of both epochs are merged for computing features of four types: features describing the point distribution, a feature relating to relative terrain elevation, features specific for the multi-target capability of laser scanning, and features combining the point clouds of both epochs to identify the change. All these features are merged in the points and then training samples are acquired to create the model for supervised classification, which is then applied to the whole study area. The final results reach an overall accuracy of over 90% for both epochs of eight classes: lost tree, new tree, lost building, new building, changed ground, unchanged building, unchanged tree, and unchanged ground.
机译:本文提出了一种新的3D点云变化检测(CD)方法。它使用机器学习一步将分类和CD结合在一起。合并两个纪元的点云数据,以计算四种类型的特征:描述点分布的特征,与相对地形高程有关的特征,特定于激光扫描多目标能力的特征以及将两者的点云组合在一起的特征识别变化的时期。将所有这些特征合并到各个点中,然后获取训练样本以创建用于监督分类的模型,然后将其应用于整个研究区域。八个类别的两个时期的最终结果均达到90%以上的总体准确度:失树,新树,失落建筑物,新建筑物,变地,不变建筑物,不变树和不变地面。

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