Improved deep learning segmentation of outdoor point clouds with different sampling strategies and using intensities

IF 1.7 4区 地球科学 Q3 GEOSCIENCES, MULTIDISCIPLINARY Open Geosciences Pub Date : 2024-03-13 DOI:10.1515/geo-2022-0611
Harintaka Harintaka, Calvin Wijaya
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Abstract

The rapid growth of outdoor digital twin data sets and advancements in 3D data acquisition technology have sparked interest in improving segmentation performance using deep learning. This research aims to analyze and evaluate different sampling strategies and optimization techniques while exploring the intensity information of outdoor point cloud data. Two sampling strategies, random and stratified sampling, are employed to divide a limited data set. Additionally, the data set is divided into point cloud data with and without intensity. The PointNet++ model is used to segment the point cloud data into two classes, vegetation and structure. The results indicate that stratified sampling outperforms random sampling, yielding a considerable improvement in mean intersection over union scores of up to 10%. Interestingly, the inclusion of intensity information in the data set does not universally enhance performance. Although the use of intensity improves the performance of random sampling, it does not benefit stratified sampling. This research provides insights into the effectiveness of different sampling strategies for outdoor point cloud data segmentation. The findings can contribute to the development of optimized approaches to improving segmentation accuracy in outdoor digital twin applications using deep learning techniques.
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利用不同的采样策略和强度改进户外点云的深度学习分割
户外数字孪生数据集的快速增长和三维数据采集技术的进步,激发了人们对利用深度学习提高分割性能的兴趣。本研究旨在分析和评估不同的采样策略和优化技术,同时探索室外点云数据的强度信息。本研究采用随机抽样和分层抽样两种抽样策略来划分有限的数据集。此外,数据集还分为有强度和无强度的点云数据。使用 PointNet++ 模型将点云数据分为植被和结构两类。结果表明,分层抽样的效果优于随机抽样,其平均交叉点比联合得分提高了 10%。有趣的是,在数据集中加入强度信息并不能普遍提高性能。虽然强度的使用提高了随机抽样的性能,但却不利于分层抽样。这项研究深入探讨了不同采样策略在室外点云数据分割中的有效性。研究结果有助于开发优化方法,利用深度学习技术提高户外数字孪生应用中的分割精度。
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来源期刊
Open Geosciences
Open Geosciences GEOSCIENCES, MULTIDISCIPLINARY-
CiteScore
3.10
自引率
10.00%
发文量
63
审稿时长
15 weeks
期刊介绍: Open Geosciences (formerly Central European Journal of Geosciences - CEJG) is an open access, peer-reviewed journal publishing original research results from all fields of Earth Sciences such as: Atmospheric Sciences, Geology, Geophysics, Geography, Oceanography and Hydrology, Glaciology, Speleology, Volcanology, Soil Science, Palaeoecology, Geotourism, Geoinformatics, Geostatistics.
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