基于几何和辐射数据集成的摄影测量点云分类

IF 0.5 Q3 Earth and Planetary Sciences
G. G. Pessoa, Amilton Amorim, M. Galo, M. Galo
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引用次数: 4

摘要

点云信息的提取通常是在应用基于对象几何特征的分类方法之后进行的。然而,摄影测量点云的分类可以使用辐射信息与几何信息相结合来进行,以最大限度地减少可能的分类问题。考虑到这一点,这项工作提出了一种对摄影测量点云进行分类的方法,该点云是由遥控飞机系统(RPAS)获取的航空图像的对应关系生成的。所提出的摄影测量点云分类方法包括基于决策树的像素监督分类方法。为了实现这一点,使用了三个数据集,其中一个用于定义哪些属性允许在类之间进行区分以及阈值的定义。最初,基于训练样本提取了几个属性。提取的每个类别的属性的平均值和标准偏差值用于指导决策树的定义。将定义的决策树应用于其他两点云,以验证该方法并进行主题准确性评估。应用于两个验证领域的基于kappa一致系数的分类的定量分析达到了高于0.938的值
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PHOTOGRAMMETRIC POINT CLOUD CLASSIFICATION BASED ON GEOMETRIC AND RADIOMETRIC DATA INTEGRATION
The extraction of information from point cloud is usually done after the application of classification methods based on the geometric characteristics of the objects. However, the classification of photogrammetric point clouds can be carried out using radiometric information combined with geometric information to minimize possible classification issues. With this in mind, this work proposes an approach to the classification of photogrammetric point cloud, generated by correspondence of aerial images acquired by Remotely Piloted Aircraft System (RPAS). The proposed approach for classifying photogrammetric point clouds consists of a pixel-supervised classification method, based on a decision tree. To achieve this, three data sets were used, one to define which attributes allow discrimination between the classes and the definition of the thresholds. Initially, several attributes were extracted based on a training sample. The average and standard deviation values for the attributes of each class extracted were used to guide the decision tree definition. The defined decision tree was applied to the other two point clouds to validate the approach and for thematic accuracy assessment. The quantitative analyses of the classifications based on kappa coefficient of agreement, applied to both validation areas, reached values higher than 0.938
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来源期刊
Boletim De Ciencias Geodesicas
Boletim De Ciencias Geodesicas Earth and Planetary Sciences-General Earth and Planetary Sciences
CiteScore
1.70
自引率
20.00%
发文量
10
审稿时长
3 months
期刊介绍: The Boletim de Ciências Geodésicas publishes original papers in the area of Geodetic Sciences and correlated ones (Geodesy, Photogrammetry and Remote Sensing, Cartography and Geographic Information Systems). Submitted articles must be unpublished, and should not be under consideration for publication in any other journal. Previous publication of the paper in conference proceedings would not violate the originality requirements. Articles must be written preferably in English language.
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