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Approach for 3D Cultural Relic Classification Based on a Low-Dimensional Descriptor and Unsupervised Learning

机译:基于低维描述符和无监督学习的3D文化遗物分类方法

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摘要

Computer-aided classification serves as the basis of virtual cultural relic management and display. The majority of the existing cultural relic classification methods require labelling of the samples of the dataset; however, in practical applications, there is often a lack of category labels of samples or an uneven distribution of samples of different categories. To solve this problem, we propose a 3D cultural relic classification method based on a low dimensional descriptor and unsupervised learning. First, the scale-invariant heat kernel signature (Si-HKS) was computed. The heat kernel signature denotes the heat flow of any two vertices across a 3D shape and the heat diffusion propagation is governed by the heat equation. Secondly, the Bag-of-Words (BoW) mechanism was utilized to transform the Si-HKS descriptor into a low-dimensional feature tensor, named a SiHKS-BoW descriptor that is related to entropy. Finally, we applied an unsupervised learning algorithm, called MKDSIF-FCM, to conduct the classification task. A dataset consisting of 3D models from 41 Tang tri-color Hu terracotta Eures was utilized to validate the effectiveness of the proposed method. A series of experiments demonstrated that the SiHKS-BoW descriptor along with the MKDSIF-FCM algorithm showed the best classification accuracy, up to 99.41%, which is a solution for an actual case with the absence of category labels and an uneven distribution of different categories of data. The present work promotes the application of virtual reality in digital projects and enriches the content of digital archaeology.
机译:计算机辅助分类为虚拟文物管理和显示的基础。大多数现有的文物分类方法需要标记数据集的样本;然而,在实际应用中,通常缺乏类别的样本标签或不同类别的样本的不均匀分布。为了解决这个问题,我们提出了一种基于低维描述符和无监督学习的3D文化遗物分类方法。首先,计算规模不变的热内核签名(SI-HKS)。热核特征表示跨越3D形状的任何两个顶点的热流,并且热扩散传播由热方程控制。其次,利用单词袋(弓)机制将Si-HKS描述符转换为低维特征张量,命名为与熵相关的Sihks-Bow描述符。最后,我们应用了一个无监督的学习算法,称为MKDSIF-FCM,进行分类任务。使用41汤三色HU Terracotta Eures组成的数据集,用于验证所提出的方法的有效性。一系列实验表明,Sihks-Bow描述符以及MKDSIF-FCM算法显示了最佳分类精度,高达99.41%,这是实际情况的解决方案,没有类别标签和不同类别的不均匀分布数据的。目前的工作促进了数字项目中虚拟现实的应用,丰富了数字考古的内容。

著录项

  • 期刊名称 Entropy
  • 作者单位
  • 年(卷),期 2020(22),11
  • 年度 2020
  • 页码 1290
  • 总页数 22
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:热内核签名;袋子袋;文物分类;无监督的学习算法;
  • 入库时间 2022-08-21 12:21:00

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