A FEATURE-BASED DEEP LEARNING APPROACH FOR THE EXTRACTION OF GROUND POINTS FROM 3D POINT CLOUDS

Q2 Social Sciences
Y. Dogan, A. O. Ok
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引用次数: 0

Abstract

Abstract. Extracting ground points from 3D point clouds is important for sustainable development goals, infrastructure planning, disaster management, and more. However, the irregularity and complexity of the data make it challenging. Deep learning techniques, particularly end-to-end and non-end-to-end approaches, have shown promise for 3D point cloud segmentation and classification, but both require a comprehensive understanding of the features and their relationship to the problem. This paper presents a study on the filtering of 3D LiDAR point clouds into ground and non-ground points using a non-end-to-end deep learning approach. The aim of this research is to investigate the effectiveness of utilizing geometric features and a binary classifier-based deep learning model in accurately classifying point clouds. The publicly available ACT benchmark datasets were employed for training, validation, and testing purposes. The study utilized a k-fold cross-validation method to address the limited availability of training data. The results demonstrated highly satisfactory performance, with validation averages reaching 96.83% for the divided Dataset-1 and an accuracy of 97% for the test set. Furthermore, an independent dataset, Dataset-2, was used to evaluate the generalizability of the trained model, achieving an accuracy of 93%. These findings highlight the potential of the proposed non-end-to-end approach to filtering point cloud data and its applicability in various domains such as DEM and DTM production, city modeling, urban planning, and disaster management. Moreover, this study emphasizes the need for accurate data to achieve sustainable development goals, positioning the proposed approach as a viable option in various studies.
一种基于特征的深度学习方法,用于从三维点云中提取地面点
摘要从三维点云中提取地面点对于可持续发展目标、基础设施规划、灾害管理等都很重要。然而,数据的不规则性和复杂性使其具有挑战性。深度学习技术,特别是端到端和非端到端的方法,已经显示出3D点云分割和分类的前景,但两者都需要全面了解特征及其与问题的关系。本文研究了使用非端到端深度学习方法将3D激光雷达点云过滤为地面点和非地面点。本研究的目的是研究利用几何特征和基于二元分类器的深度学习模型对点云进行精确分类的有效性。公开可用的ACT基准数据集用于训练、验证和测试目的。该研究采用了k倍交叉验证方法来解决训练数据可用性有限的问题。结果证明了非常令人满意的性能,分割的数据集-1的验证平均值达到96.83%,测试集的准确率达到97%。此外,使用独立的数据集dataset-2来评估训练模型的可推广性,实现了93%的准确性。这些发现突出了所提出的过滤点云数据的非端到端方法的潜力及其在DEM和DTM生成、城市建模、城市规划和灾害管理等各个领域的适用性。此外,本研究强调需要准确的数据来实现可持续发展目标,并将所提出的方法定位为各种研究中的可行选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.70
自引率
0.00%
发文量
949
审稿时长
16 weeks
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