用于中国古建筑点云语义分割的 MP-DGCNN

IF 2.6 1区 艺术学 Q2 CHEMISTRY, ANALYTICAL
Caochenyu Zhou, Youqiang Dong, Miaole Hou, Yuhang Ji, Caihuan Wen
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引用次数: 0

摘要

点云语义分割是扫描到 HBIM 过程中的关键步骤。为了减少 DGCNN 处理过程中的信息量,本文提出了一种用于古建筑点云分割的混合池化动态图卷积神经网络(MP-DGCNN)。本文提出的 MP-DGCNN 与 DGCNN 的区别主要体现在两个方面:(1)为了更全面地表征点的局部拓扑结构,重新定义了边缘特征,并在原有边缘特征的基础上增加了距离特征和邻近点特征;(2)基于多层感知器(MLP),建立了内部特征调整机制,通过融合自适应池化、最大池化、平均池化和聚合池化,设计了可学习的混合池化算子,从点云拓扑结构中学习局部图特征。为了验证所提出的算法,在曲潭寺点云数据集上进行了实验,结果表明,与PointNet、PointNet++、DGCNN、GACNet和LDGCNN相比,MP-DGCNN分割网络的OA、mIOU和mAcc最高,分别达到90.19%、65.34%和79.41%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

MP-DGCNN for the semantic segmentation of Chinese ancient building point clouds

MP-DGCNN for the semantic segmentation of Chinese ancient building point clouds

Point cloud semantic segmentation is a key step in the scan-to-HBIM process. In order to reduce the information in the process of DGCNN, this paper proposes a Mix Pooling Dynamic Graph Convolutional Neural Network (MP-DGCNN) for the segmentation of ancient architecture point clouds. The proposed MP-DGCNN differs from DGCNN mainly in two aspects: (1) to more comprehensively characterize the local topological structure of points, the edge features are redefined, and distance and neighboring points are added to the original edge features; (2) based on a Multilayer Perceptron (MLP), an internal feature adjustment mechanism is established, and a learnable mix pooling operator is designed by fusing adaptive pooling, max pooling, average pooling, and aggregation pooling, to learn local graph features from the point cloud topology. To verify the proposed algorithm, experiments are conducted on the Qutan Temple point cloud dataset, and the results show that compared with PointNet, PointNet++, DGCNN, GACNet and LDGCNN, the MP-DGCNN segmentation network achieves the highest OA, mIOU and mAcc, reaching 90.19%,65.34% and 79.41%, respectively.

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来源期刊
Heritage Science
Heritage Science Arts and Humanities-Conservation
CiteScore
4.00
自引率
20.00%
发文量
183
审稿时长
19 weeks
期刊介绍: Heritage Science is an open access journal publishing original peer-reviewed research covering: Understanding of the manufacturing processes, provenances, and environmental contexts of material types, objects, and buildings, of cultural significance including their historical significance. Understanding and prediction of physico-chemical and biological degradation processes of cultural artefacts, including climate change, and predictive heritage studies. Development and application of analytical and imaging methods or equipments for non-invasive, non-destructive or portable analysis of artwork and objects of cultural significance to identify component materials, degradation products and deterioration markers. Development and application of invasive and destructive methods for understanding the provenance of objects of cultural significance. Development and critical assessment of treatment materials and methods for artwork and objects of cultural significance. Development and application of statistical methods and algorithms for data analysis to further understanding of culturally significant objects. Publication of reference and corpus datasets as supplementary information to the statistical and analytical studies above. Description of novel technologies that can assist in the understanding of cultural heritage.
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