基于深度学习管道算法和几何特征分析的森林激光雷达数据分类

Fayez Tarsha Kurdi
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引用次数: 1

摘要

本文采用基于多层感知器(MLP)神经网络的深度学习管道算法对森林光探测与测距(LiDAR)点云进行自动分类。为了实现这一点,机器学习(ML)算法参数(如输入层元素、隐藏层数量、激活函数和alpha值)被优化以实现最佳性能。考虑到几何特征在输入层中的重要作用,对文献中提出的大多数特征进行分析,以便在算法输入层中采用更有效的特征。因此,除了点云的三维坐标外,还选择了7个几何特征来表示第一层算法。该算法将森林激光雷达点云分为植被和地形两类。我们用两个云点进行了测试,一个是平地,另一个是山区。使用该方法的结果提供了大于98%的准确率分数。得到的结果证实了所提出的分类算法对于文献中设想的方法的高效率。最后,下一步是推广这种方法,将更复杂的场景分类为城市区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Forest LiDAR Data Using Deep Learning Pipeline Algorithm and Geometric Feature Analysis
This paper adapts the deep learning pipeline algorithm based on the Multi-Layer Perceptron (MLP) Neural Network to automatically classify the forest Light Detection And Ranging (LiDAR) point cloud. To achieve this, the Machine Learning (ML) algorithm parameters such as input layer elements, number of hidden layers, activation functions, and alpha value are optimized to achieve the best possible performance. Regarding the important role of the geometric features in the input layer, most of the suggested features in the literature are analyzed to employ the more effective ones in the algorithm input layer. As a result, seven geometric features, in addition to the 3D coordinates of the point cloud, are chosen to represent the first algorithm layer. The proposed algorithm classifies the forest LiDAR point cloud into two classes: vegetation and terrain. The proposed approach was tested using two points of clouds, one of a flat area and the other of a mountain area. The results of using the suggested approach provide an accuracy score greater than 98%. The obtained result confirms the high efficiency of the proposed classification algorithm regarding the envisaged approaches in the literature. Finally, the next step is to generalize this approach to classify more complicated scenes as urban areas.
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