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Multiscale Supervised Classification of Point Clouds with Urban and Forest Applications

机译:城市和森林应用的点云多尺度监督分类

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摘要

We analyze the utility of multiscale supervised classification algorithms for object detection and extraction from laser scanning or photogrammetric point clouds. Only the geometric information (the point coordinates) was considered, thus making the method independent of the systems used to collect the data. A maximum of five features (input variables) was used, four of them related to the eigenvalues obtained from a principal component analysis (PCA). PCA was carried out at six scales, defined by the diameter of a sphere around each observation. Four multiclass supervised classification models were tested (linear discriminant analysis, logistic regression, support vector machines, and random forest) in two different scenarios, urban and forest, formed by artificial and natural objects, respectively. The results obtained were accurate (overall accuracy over 80% for the urban dataset, and over 93% for the forest dataset), in the range of the best results found in the literature, regardless of the classification method. For both datasets, the random forest algorithm provided the best solution/results when discrimination capacity, computing time, and the ability to estimate the relative importance of each variable are considered together.
机译:我们分析了多尺度监督分类算法在从激光扫描或摄影测量点云中进行对象检测和提取的实用性。仅考虑几何信息(点坐标),因此使该方法独立于用于收集数据的系统。最多使用五个特征(输入变量),其中四个与从主成分分析(PCA)获得的特征值有关。 PCA以六种比例进行,这由围绕每个观察的球体直径定义。在分别由人造物体和自然物体形成的两种不同场景(城市和森林)中,测试了四个多类监督分类模型(线性判别分析,逻辑回归,支持向量机和随机森林)。无论采用何种分类方法,所获得的结果都是准确的(城市数据集的总体准确性超过80%,森林数据集的总体准确性超过93%),在文献中发现的最佳结果范围内。对于两个数据集,当将判别能力,计算时间和估计每个变量的相对重要性的能力一起考虑时,随机森林算法提供了最佳的解决方案/结果。

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