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COMPARISON OF TRADITIONAL AND MACHINE LEARNING BASE METHODS FOR GROUND POINT CLOUD LABELING

机译:地面云标签传统与机器学习基础的比较

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Today, a variety of methods have been proposed by researchers to distinguish ground and non-ground points in point cloud data. Most fully automated methods have a common disadvantage which is the lack of proper algorithm response for all areas and levels of the ground, so most of these algorithms have good outcomes in simple landscapes but encounter problems in complex landscapes. Point cloud filtering techniques can be divided into two general rule-based and novel methods. Today, the use of machine learning techniques has improved the results of classification, which has led to significant results, especially when data can be labelled at the presence of training data. In this paper, firstly, altimeter and radiometric features are extracted from the LiDAR data and the point cloud derived from digital photogrammetry. Then, these features are participated in a classification process using SVM learning and random forest methods, and the ground and Non-ground points are classified. The classification results using this method on LiDAR data show a total error of 6.2%, a type I error of 5.4%, and a type II error of 13.2%. The comparison of the proposed method with the results of LASTools software shows a reduction in total error and type I error (while increasing the type II error). This method was also investigated on the dense point cloud obtained from digital photogrammetry and based on this study, the total was 7.2%, the type I error was 6.8%, and the type II error was 10.9%.
机译:今天,研究人员提出了各种方法,以区分地面和非接地点在点云数据中。最具自动化方法具有共同的缺点,这是对地面的所有区域和地面的缺乏适当的算法响应,因此大多数这些算法在简单的景观中具有良好的结果,但在复杂的景观中遇到问题。点云过滤技术可分为两种基于规则和新的方法。今天,使用机器学习技术提高了分类结果,这导致了显着的结果,特别是当数据可以在训练数据的存在下标记数据时。在本文中,首先,从LIDAR数据和源自数字摄影测量的点云提取高度计和辐射分子。然后,这些特征参与了使用SVM学习和随机森林方法的分类过程,地面和非接地点分类。使用此方法对LIDAR数据的分类结果显示了6.2%的总误差,I型误差为5.4%,而II型误差为13.2%。所提出的方法与充满伞软件结果的比较显示总误差和I型错误的减少(同时增加II型错误)。该方法还研究了从数码摄影测量获得的致密点云并基于这项研究,总计为7.2%,I型误差为6.8%,II型误差为10.9%。

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