基于随机森林机器学习算法的无人机点云分类

M. Zeybek
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引用次数: 16

摘要

如今,基于无人机的图像已成为摄影测量和遥感等各学科制图研究人员的重要数据源。在传统的二维地籍图或地形图制作中,利用基于无人机图像的三维点云进行区域重建是一个必不可少的过程。点云需要经过各种分析才能从直接点云数据中提取更多信息,因此需要对点云进行分类。由于点云的高密度,数据处理和信息采集使得点云分类成为一项具有挑战性的任务,并且可能需要很长时间。因此,分类处理允许一个最优的解决方案,以获得有价值的信息。本研究采用随机森林机器学习算法对点的辐射特征(红带、绿带和蓝带)和由协方差特征(曲率、全方差、平面度、线性度、表面方差、各向异性和归一化地形表面)衍生的几何特征进行分类处理。此外,为了验证所提方法在基于无人机的点云上获得随机森林方法的精度和性能的适用性,给出了实例研究。经过分类处理后,将模型中每个点分配的类与参考数据类进行比较。最后,该方法在数据集上的分类总体准确率达到96%,Kappa指数达到91%。
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CLASSIFICATION OF UAV POINT CLOUDS BY RANDOM FOREST MACHINE LEARNING ALGORITHM
Today, unmanned aerial vehicle (UAV)-based images have become an important data sources for researchers who deals with mapping from various disciplines on photogrammetry and remote sensing. Reconstruction of an area with three-dimensional (3D) point clouds from UAV-based images are an essential process to be used for traditional 2D cadastral maps or to produce a topographic maps. Point clouds should be classified since they subjected to various analyses for extraction for further information from direct point cloud data. Due to the high density of point clouds, data processing and gathering information makes the classification of point clouds a challenging task and may take a long time. Therefore, the classification processing allows an optimal solution to acquire valuable information. In this study, random forest machine learning algorithm for classification processing is applied with radiometric features (Red band, Green band and Blue band) and geometric characteristics derived from covariance feature (curvature, omnivariance, flatness, linearity, surface variance, anisotropy and normalized terrain surface) of points. In addition, the case study is presented in order to test applicability of the proposed methodology to acquire an accuracy and performance of random forest method on the UAV based point cloud. After the classification processing, a class assigned each point from the model was compared with the reference data class. Lastly, the overall accuracy of the classification was achieved as 96% and the Kappa index was reached to 91% on data set.
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