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Full-Waveform LiDAR Point Clouds Classification Based on Wavelet Support Vector Machine and Ensemble Learning

机译:基于小波支持向量机和集成学习的全波形LiDAR点云分类

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摘要

Light Detection and Ranging (LiDAR) produces 3D point clouds that describe ground objects, and has been used to make object interpretation in many cases. However, traditional LiDAR only records discrete echo signals and provides limited feature parameters of point clouds, while full-waveform LiDAR (FWL) records the backscattered echo in the form of a waveform, which provides more echo information. With the development of machine learning, support vector machine (SVM) is one of the commonly used classifiers to deal with high dimensional data via small amount of samples. Ensemble learning, which combines a set of base classifiers to determine the output result, is presented and SVM ensemble is used to improve the discrimination ability, owing to small differences in features between different types of data. In addition, previous kernel functions of SVM usually cause under-fitting or over-fitting that decreases the generalization performance. Hence, a series of kernel functions based on wavelet analysis are used to construct different wavelet SVMs (WSVMs) that improve the heterogeneity of ensemble system. Meanwhile, the parameters of SVM have a significant influence on the classification result. Therefore, in this paper, FWL point clouds are classified by WSVM ensemble and particle swarm optimization is used to find the optimal parameters of WSVM. Experimental results illustrate that the proposed method is robust and effective, and it is applicable to some practical work.
机译:光检测和测距(LiDAR)生成描述地面物体的3D点云,并在许多情况下被用于进行物体解释。但是,传统的LiDAR仅记录离散的回波信号并提供点云有限的特征参数,而全波形LiDAR(FWL)以波形形​​式记录反向散射的回波,从而提供更多的回波信息。随着机器学习的发展,支持向量机(SVM)是通过少量样本处理高维数据的常用分类器之一。提出了集成学习,它结合了一组基础分类器来确定输出结果,并且由于不同类型数据之间的特征差异很小,因此使用SVM集成来提高判别能力。此外,SVM以前的内核功能通常会导致拟合不足或拟合过度,从而降低了泛化性能。因此,基于小波分析的一系列内核函数被用于构造不同的小波SVM(WSVM),从而提高集成系统的异构性。同时,支持向量机的参数对分类结果有重要影响。因此,本文通过WSVM集成对FWL点云进行分类,并使用粒子群算法找到WSVM的最佳参数。实验结果表明,该方法是鲁棒有效的,适用于一些实际工作。

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