Heritage Science (Jan 2023)

BEGL: boundary enhancement with Gaussian Loss for rock-art image segmentation

  • Chuanping Bai,
  • Yangyang Liu,
  • Pengbo Zhou,
  • Xiaofeng Wang,
  • Mingquan Zhou

DOI
https://doi.org/10.1186/s40494-022-00857-5
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 10

Abstract

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Abstract Rock-art has been scratched, carved, and pecked into rock panels all over the world resulting in a huge number of engraved figures on natural rock surfaces that record ancient human life and culture. To preserve and recognize these valuable artifacts of human history, 2D digitization of rock surfaces has become a suitable approach due to the development of powerful 2D image processing techniques in recent years. In this article, we present a novel systematical framework for the segmentation of different petroglyph figures from 2D high-resolution images. The novel boundary enhancement with Gaussian loss (BEGL) function is proposed aiming at refining and smoothing the rock-arts boundaries in the basic UNet architecture. Several experiments on the 3D-pitoti dataset demonstrate that our proposed approach can achieve more accurate boundaries and superior results compared with other loss functions. The comprehensive framework of petroglyph segmentation from 2D high-resolution images provides the foundation for recognizing multiple petroglyph marks. The framework can then be extended to other cultural heritage digital protection domain easily.

Keywords