Author:
Xu Xueli,Song Da,Geng Guohua,Zhou Mingquan,Liu Jie,Li Kang,Cao Xin
Abstract
AbstractDue to the antiquity and difficulty of excavation, the Terracotta Warriors have suffered varying degrees of damage. To restore the cultural relics to their original appearance, utilizing point clouds to repair damaged Terracotta Warriors has always been a hot topic in cultural relic protection. The output results of existing methods in point cloud completion often lack diversity. Probability-based models represented by Denoising Diffusion Probabilistic Models have recently achieved great success in the field of images and point clouds and can output a variety of results. However, one drawback of diffusion models is that too many samples result in slow generation speed. Toward this issue, we propose a new neural network for Terracotta Warriors fragments completion. During the reverse diffusion stage, we initially decrease the number of sampling steps to generate a coarse result. This preliminary outcome undergoes further refinement through a multi-scale refine network. Additionally, we introduce a novel approach called Partition Attention Sampling to enhance the representation capabilities of features. The effectiveness of the proposed model is validated in the experiments on the real Terracotta Warriors dataset and public dataset. The experimental results conclusively demonstrate that our model exhibits competitive performance in comparison to other existing models.
Funder
Graduate Innovation Program at Northwest University
National Natural Science Foundation of China
Key Research and Development Projects of Shaanxi Province
China Postdoctoral Science Foundation
Key Research and Development Program of Shaanxi Province
Publisher
Springer Science and Business Media LLC
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