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One-Class Classification of Airborne LiDAR Data in Urban Areas Using a Presence and Background Learning Algorithm

机译:使用存在和背景学习算法对城市机载LiDAR数据进行一类分类

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Automatic classification of light detection and ranging (LiDAR) data in urban areas is of great importance for many applications such as generating three-dimensional (3D) building models and monitoring power lines. Traditional supervised classification methods require training samples of all classes to construct a reliable classifier. However, complete training samples are normally hard and costly to collect, and a common circumstance is that only training samples for a class of interest are available, in which traditional supervised classification methods may be inappropriate. In this study, we investigated the possibility of using a novel one-class classification algorithm, i.e., the presence and background learning (PBL) algorithm, to classify LiDAR data in an urban scenario. The results demonstrated that the PBL algorithm implemented by back propagation (BP) neural network (PBL-BP) could effectively classify a single class (e.g., building, tree, terrain, power line, and others) from airborne LiDAR point cloud with very high accuracy. The mean F-score for all of the classes from the PBL-BP classification results was 0.94, which was higher than those from one-class support vector machine (SVM), biased SVM, and maximum entropy methods (0.68, 0.82 and 0.93, respectively). Moreover, the PBL-BP algorithm yielded a comparable overall accuracy to the multi-class SVM method. Therefore, this method is very promising in the classification of the LiDAR point cloud.
机译:对于许多应用程序,例如生成三维(3D)建筑模型和监控电源线,在城市区域中对光检测和测距(LiDAR)数据进行自动分类非常重要。传统的监督分类方法需要训练所有类别的样本来构造可靠的分类器。但是,完整的训练样本通常很难收集且成本很高,并且常见的情况是仅针对感兴趣类别的训练样本可用,而传统的监督分类方法可能不合适。在这项研究中,我们调查了使用新颖的一类分类算法(即存在和背景学习(PBL)算法)对城市场景中的LiDAR数据进行分类的可能性。结果表明,由反向传播(BP)神经网络(PBL-BP)实现的PBL算法可以有效地从机载LiDAR点云中高效地对单个类别(例如,建筑物,树木,地形,电力线等)进行分类准确性。来自PBL-BP分类结果的所有类别的平均F得分为0.94,高于一类支持向量机(SVM),有偏SVM和最大熵方法(0.68、0.82和0.93,分别)。此外,PBL-BP算法产生了与多类SVM方法相当的整体精度。因此,该方法在LiDAR点云分类中非常有前途。

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