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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >AUTOMATIC HERITAGE BUILDING POINT CLOUD SEGMENTATION ANDCLASSIFICATION USING GEOMETRICAL RULES
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AUTOMATIC HERITAGE BUILDING POINT CLOUD SEGMENTATION ANDCLASSIFICATION USING GEOMETRICAL RULES

机译:自动遗产建筑点云分割和使用几何规则分类

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The segmentation of a point cloud presents an important step in the 3D modelling process of heritage structures. This is true in many scale levels, including the segmentation, identification, and classification of architectural elements from the point cloud of a building. In this regard, historical buildings often present complex elements which render the 3D modelling process longer when performed manually. The aim of this paper is to explore approaches based on certain common geometric rules in order to segment, identify, and classify point clouds into architectural elements. In particular, the detection of attics and structural supports (i.e. columns and piers) will be addressed. Results show that the developed algorithm manages to detect supports in three separate data sets representing three different types of architecture. The algorithm also managed to identify the type of support and divide them into two groups: columns and piers. Overall, the developed method provides a fast and simple approach to classify point clouds automatically into several classes, with a mean success rate of 81.61 % and median success rate of 85.61&thinsp% for three tested data sets.
机译:点云的分割呈现了遗产结构的3D建模过程中的一个重要步骤。这在许多规模级别中是如此,包括来自建筑点云的建筑元素的分段,识别和分类。在这方面,历史建筑通常存在复杂的元素,这在手动执行时使3D建模过程更长。本文的目的是探讨基于某些通用几何规则的方法,以便为架构元素进行分段,识别和分类点云。特别地,将检测阁楼和结构支持(即列和码头)。结果表明,已发达的算法管理以检测表示三种不同类型架构类型的三个单独的数据集中的支持。该算法还设法识别支持的类型,并将它们划分为两组:列和码头。总的来说,开发方法提供了一种快速而简单的方法,可以自动将点云分类为几个类,其平均成功率为81.61%,2个测试数据集的中位数成功率为85.61&thinsp%。

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