三维点云模型特征张量描述子的构建与自相似度分析

Hailong Hu, Zhong Li, S. Qin, Li-zhuang Ma
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引用次数: 0

摘要

三维模型的局部自相似是形状分析中的一个基本问题。局部形状描述子的构造对自相似分析的最终结果至关重要。为了解决这一问题,提出了一种基于张量融合特征描述子的自相似分析方法。首先,利用相关面和对映点近似计算点云模型的形状直径函数(SDF);然后,利用谱聚类方法将模型分割成子块,利用KNN邻域点的SDF、形状指数(SI)和高斯曲率(GS)矩阵构建三维特征张量;最后,通过构造张量范数映射得到形状描述子,定义相似测度,分析模型子块之间的自相似度。几种最先进的方法(包括部分匹配和显著性检测)是经过测试的。结果表明,该方法不仅在视觉效果上,而且在相似度度量和相对误差上都能有效地描述点云模型的形状,提高了相似子块的识别精度。
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Construction of Feature Tensor Descriptor and Self-Similarity Analysis for 3D Point Cloud Models
Local self-similarity of 3D model is a fundamental problem in the shape analysis. The construction of a local shape descriptor is very important to the final result of self-similarity analysis. To solve this problem, a self-similarity analysis method based on the tensor fusion feature descriptor is proposed. Firstly, the shape diameter function (SDF) of a point cloud model is approximately calculated by using relevant facets and antipodal points. Then, spectral clustering is used to segment the model into sub-blocks, and the three-dimensional feature tensor is constructed from the SDF, shape index (SI) and Gauss curvature (GS) matrix of KNN neighborhood points. Finally, the shape descriptor is obtained by constructing the mapping with the tensor norm, and then the similarity measure is defined and the self-similarity between the sub-blocks of the model is analyzed. Several state-of-the-art methods (including partial matching and saliency detection) are 第 4 期 胡海龙, 等: 三维点云模型特征张量描述符的构造及自相似性分析 591 tested. In terms of not only the visual effect, but also the similarity measure and the relative errors, the results show that this method can effectively describe the shape and improves the recognition accuracy of similar sub-blocks of a point cloud model.
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来源期刊
计算机辅助设计与图形学学报
计算机辅助设计与图形学学报 Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
1.20
自引率
0.00%
发文量
6833
期刊介绍:
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Error-Controlled Data Reduction Approach for Large-Scale Structured Datasets A Survey on the Visual Analytics for Data Ranking Element Layout Prediction with Sequential Operation Data Interactive Visual Analysis Engine for High-Performance CAE Simulations 3D Point Cloud Restoration via Deep Learning: A Comprehensive Survey
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