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A Multiscale and Hierarchical Feature Extraction Method for Terrestrial Laser Scanning Point Cloud Classification

机译:地面激光扫描点云分类的多尺度分层特征提取方法

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The effective extraction of shape features is an important requirement for the accurate and efficient classification of terrestrial laser scanning (TLS) point clouds. However, the challenge of how to obtain robust and discriminative features from noisy and varying density TLS point clouds remains. This paper introduces a novel multiscale and hierarchical framework, which describes the classification of TLS point clouds of cluttered urban scenes. In this framework, we propose multiscale and hierarchical point clusters (MHPCs). In MHPCs, point clouds are first resampled into different scales. Then, the resampled data set of each scale is aggregated into several hierarchical point clusters, where the point cloud of all scales in each level is termed a point-cluster set. This representation not only accounts for the multiscale properties of point clouds but also well captures their hierarchical structures. Based on the MHPCs, novel features of point clusters are constructed by employing the latent Dirichlet allocation (LDA). An LDA model is trained according to a training set. The LDA model then extracts a set of latent topics, i.e., a feature of topics, for a point cluster. Finally, to apply the introduced features for point-cluster classification, we train an AdaBoost classifier in each point-cluster set and obtain the corresponding classifiers to separate the TLS point clouds with varying point density and data missing into semantic regions. Compared with other methods, our features achieve the best classification results for buildings, trees, people, and cars from TLS point clouds, particularly for small and moving objects, such as people and cars.
机译:有效提取形状特征是对地面激光扫描(TLS)点云进行准确有效分类的重要要求。但是,如何从嘈杂的和变化的TLS点云中获取强大而有区别的功能仍然存在挑战。本文介绍了一种新颖的多尺度和分层框架,该框架描述了混乱的城市场景的TLS点云的分类。在此框架中,我们提出了多尺度和层次的点簇(MHPC)。在MHPC中,首先将点云重新采样为不同的比例。然后,将每个标度的重新采样的数据集聚合到几个分层的点簇中,其中每个级别中所有标度的点云都称为点聚类集。这种表示不仅考虑了点云的多尺度特性,而且很好地捕捉了它们的层次结构。基于MHPC,通过使用潜在狄利克雷分配(LDA)构造了点簇的新颖特征。根据训练集对LDA模型进行训练。然后,LDA模型为点簇提取一组潜在主题,即主题特征。最后,为了将引入的功能应用于点集群分类,我们在每个点集群集中训练了一个AdaBoost分类器,并获得了相应的分类器,以分离具有不同点密度和缺少语义区域数据的TLS点云。与其他方法相比,我们的功能通过TLS点云对建筑物,树木,人和汽车实现了最佳分类结果,特别是对于人和汽车等小型移动物体。

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