Heritage Science (Jan 2024)

A diffusion probabilistic model for traditional Chinese landscape painting super-resolution

  • Qiongshuai Lyu,
  • Na Zhao,
  • Yu Yang,
  • Yuehong Gong,
  • Jingli Gao

DOI
https://doi.org/10.1186/s40494-023-01123-y
Journal volume & issue
Vol. 12, no. 1
pp. 1 – 12

Abstract

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Abstract Traditional Chinese landscape painting is prone to low-resolution image issues during the digital protection process. To reconstruct high-quality images from low-resolution landscape paintings, we propose a novel Chinese landscape painting generation diffusion probabilistic model (CLDiff), which is similar to the Langevin dynamic process, and realizes the transformation of the Gaussian distribution into the empirical data distribution through multiple iterative refinement steps. The proposed CLDiff can provide ink texture clear super-resolution predictions by gradually transforming the pure Gaussian noise into a super-resolution landscape painting condition on a low-resolution input through a parameterized Markov Chain. Moreover, by introducing an attention module with an energy function into the U-Net architecture, we turn the denoising diffusion probabilistic model into a powerful generator. Experimental results show that CLDiff achieves better visual results and highly competitive performance in traditional Chinese Landscape painting super-resolution tasks.

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