Abstract

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.

Highlights

  • Cultural relics are the testimony of a country’s historical existence, the crystallization of human wisdom, which renders them highly precious for their historical, artistic, and scientific research value.China, an ancient country with a civilization over 5000 years old, has produced a variety of cultural relics with exquisite technology.In the Tang dynasty, the developed economy and culture produced a prosperous pottery industry.Tri-color Hu terracotta figures, shown in Figure 1, a kind of glazed pottery, embody the unique aesthetic value of the Tang dynasty

  • 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

  • scale-invariant heat kernel signature (Si-heat kernel signature (HKS)) descriptor could high on our dataset, and its ability to handle data under isometric deformation and scale change make it performance on our dataset, and its ability to handle data under isometric deformation and scale ideal for our cultural relic classification task

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Summary

Introduction

Cultural relics are the testimony of a country’s historical existence, the crystallization of human wisdom, which renders them highly precious for their historical, artistic, and scientific research value.China, an ancient country with a civilization over 5000 years old, has produced a variety of cultural relics with exquisite technology.In the Tang dynasty, the developed economy and culture produced a prosperous pottery industry.Tri-color Hu terracotta figures, shown in Figure 1, a kind of glazed pottery, embody the unique aesthetic value of the Tang dynasty. An ancient country with a civilization over 5000 years old, has produced a variety of cultural relics with exquisite technology. In the Tang dynasty, the developed economy and culture produced a prosperous pottery industry. Tri-color Hu terracotta figures, shown, a kind of glazed pottery, embody the unique aesthetic value of the Tang dynasty. This pottery takes magnificence as its modeling, splendor as its color, and warmth as its verve [1]. Art galleries, and in the hands of private collectors all over the world, there are numerous beautiful and colorful Tang tri-colored crafts that were excavated from tombs and kilns, ranging from 3D ceramic sculptures to various forms

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