使用卡方权重的无监督机器学习方法在城市地区的LiDAR点云滤波性能

IF 1 4区 地球科学 Q4 GEOGRAPHY, PHYSICAL Journal of Spatial Science Pub Date : 2021-12-27 DOI:10.1080/14498596.2021.2013329
A. Sen, B. Suleymanoglu, M. Soycan
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引用次数: 0

摘要

在本研究中,我们比较了无监督机器学习方法(如链接、K-means和自组织地图)在城市地区的LiDAR滤波性能,为研究人员提供实用指导。输入参数(x-y-z和强度)使用卡方独立性检验进行归一化和加权,以提高分类精度。采用加权联动法对3个样本的总误差分别为13.53%、3.96%和1.07%,获得了最佳的成功结果。与其他方法相比,卡方加权的方法具有显著的分类和过滤潜力,并且优于许多流行的方法。
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Performance of unsupervised machine learning methods using chi-squared weights for LiDAR point cloud filtering in urban areas
ABSTRACT In this study, we compared the LiDAR filtering performances of unsupervised machine learning methods, such as linkage, K-means, and self-organizing maps, for urban areas to provide a practical guide to researchers. The input parameters (x-y-z and intensity) were normalized and weighted using a chi-squared independence test to improve the classification accuracy. The best successful results were obtained using the weighted linkage method in terms of the total error of 13.53%, 3.96%, and 1.07% for the three samples, respectively. In comparison with other approaches, methods weighted by chi-squared have significant potential for classification and filtering and outperform many popular approaches.
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来源期刊
Journal of Spatial Science
Journal of Spatial Science 地学-地质学
CiteScore
5.00
自引率
5.30%
发文量
25
审稿时长
>12 weeks
期刊介绍: The Journal of Spatial Science publishes papers broadly across the spatial sciences including such areas as cartography, geodesy, geographic information science, hydrography, digital image analysis and photogrammetry, remote sensing, surveying and related areas. Two types of papers are published by he journal: Research Papers and Professional Papers. Research Papers (including reviews) are peer-reviewed and must meet a minimum standard of making a contribution to the knowledge base of an area of the spatial sciences. This can be achieved through the empirical or theoretical contribution to knowledge that produces significant new outcomes. It is anticipated that Professional Papers will be written by industry practitioners. Professional Papers describe innovative aspects of professional practise and applications that advance the development of the spatial industry.
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