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A Multi-Primitive-Based Hierarchical Optimal Approach for Semantic Labeling of ALS Point Clouds

机译:ALS点云语义标注的基于多原语的分层最优方法

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There are normally three main steps to carrying out the labeling of airborne laser scanning (ALS) point clouds. The first step is to use appropriate primitives to represent the scanning scenes, the second is to calculate the discriminative features of each primitive, and the third is to introduce a classifier to label the point clouds. This paper investigates multiple primitives to effectively represent scenes and exploit their geometric relationships. Relationships are graded according to the properties of related primitives. Then, based on initial labeling results, a novel, hierarchical, and optimal strategy is developed to optimize semantic labeling results. The proposed approach was tested using two sets of representative ALS point clouds, namely the Vaihingen datasets and Hong Kong’s Central District dataset. The results were compared with those generated by other typical methods in previous work. Quantitative assessments for the two experimental datasets showed that the performance of the proposed approach was superior to reference methods in both datasets. The scores for correctness attained over 98% in all cases of the Vaihingen datasets and up to 96% in the Hong Kong dataset. The results reveal that our approach of labeling different classes in terms of ALS point clouds is robust and bears significance for future applications, such as 3D modeling and change detection from point clouds.
机译:通常,需要执行三个主要步骤来对机载激光扫描(ALS)点云进行标记。第一步是使用适当的图元来表示扫描场景,第二步是计算每个图元的判别特征,第三步是引入分类器以标记点云。本文研究了多种可有效表示场景并利用其几何关系的图元。根据相关图元的属性对关系进行分级。然后,基于初始标记结果,开发了一种新颖的,分层的和最优的策略来优化语义标记结果。使用两组代表性的ALS点云(即Vaihingen数据集和香港的中区数据集)对提出的方法进行了测试。将结果与先前工作中通过其他典型方法生成的结果进行比较。对两个实验数据集的定量评估表明,在两个数据集中,该方法的性能均优于参考方法。在所有Vaihingen数据集中,正确性得分均超过98%,而在香港数据集中则高达96%。结果表明,我们根据ALS点云标记不同类别的方法是可靠的,并且对将来的应用(如3D建模和来自点云的更改检测)具有重要意义。

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