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Point Cloud Semantic Segmentation Using a Deep Learning Framework for Cultural Heritage

机译:利用深层学习框架进行文化遗产的点云语义分割

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摘要

In the Digital Cultural Heritage (DCH) domain, the semantic segmentation of 3D Point Clouds with Deep Learning (DL) techniques can help to recognize historical architectural elements, at an adequate level of detail, and thus speed up the process of modeling of historical buildings for developing BIM models from survey data, referred to as HBIM (Historical Building Information Modeling). In this paper, we propose a DL framework for Point Cloud segmentation, which employs an improved DGCNN (Dynamic Graph Convolutional Neural Network) by adding meaningful features such as normal and colour. The approach has been applied to a newly collected DCH Dataset which is publicy available: ArCH (Architectural Cultural Heritage) Dataset. This dataset comprises 11 labeled points clouds, derived from the union of several single scans or from the integration of the latter with photogrammetric surveys. The involved scenes are both indoor and outdoor, with churches, chapels, cloisters, porticoes and loggias covered by a variety of vaults and beared by many different types of columns. They belong to different historical periods and different styles, in order to make the dataset the least possible uniform and homogeneous (in the repetition of the architectural elements) and the results as general as possible. The experiments yield high accuracy, demonstrating the effectiveness and suitability of the proposed approach.
机译:在数字文化遗产(DCH)域中,具有深度学习(DL)技术的3D点云的语义分割可以有助于以适当的细节识别历史建筑元素,从而加快历史建筑的建模过程用于从调查数据开发BIM模型,称为HBIM(历史建筑信息建模)。在本文中,我们提出了一个DL云分段的DL框架,它通过添加改进的DGCNN(动态图形卷积神经网络)来添加正常和颜色等有意义的功能。该方法已应用于新收集的DCH数据集,该数据集是可用的:Arch(架构文化遗产)数据集。该数据集包括11个标记的点云,从几个单一扫描的联合中源于几个扫描的联盟或后者与摄影测量调查的集成。所涉及的场景都是室内和室外的,有教堂,教堂,围栏,门口和山顶由各种拱顶覆盖,并被许多不同类型的列绑定。它们属于不同的历史时期和不同的样式,以便使数据集是最不可能的统一和均匀的(在建筑元素的重复中)以及尽可能一般的结果。实验产生高精度,展示了所提出的方法的有效性和适用性。

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