Segmentation and visualization of the Shampula dragonfly eye glass bead CT images using a deep learning method

Lingyu Liao, Qian Cheng, Xueyan Zhang, Liang Qu, Siran Liu, Shining Ma, Kunlong Chen, Yue Liu, Yongtian Wang, Weitao Song*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Micro-computed tomography (CT) of ancient Chinese glass dragonfly eye beads has enabled detailed exploration of their internal structures, contributing to our understanding of their manufacture. Segmentation of these CT images is essential but challenging due to variation in grayscale values and the presence of bubbles. This study introduces a U-Net-based model called EBV-SegNet, which enables efficient and accurate segmentation and visualization of these beads. We developed, trained, and tested the model using a dataset comprising four typical Shampula dragonfly eye beads, and the results demonstrated high-precision segmentation and precise delineation of the beads’ complex structures. These segmented data were further analyzed using the Visualization Toolkit for advanced volume rendering and reconstruction. Our application of EBV-SegNet to Shampula beads suggests the likelihood of two distinct manufacturing techniques, underscoring the potential of the model for enhancing the analysis of cultural artifacts using three-dimensional visualization and deep learning.

Original languageEnglish
Article number381
JournalHeritage Science
Volume12
Issue number1
DOIs
Publication statusPublished - Dec 2024

Keywords

  • 3D visualization
  • CT image segmentation
  • Dragonfly eye glass beads
  • U-Net

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