Hongjuan Gao’s research while affiliated with Ningxia University and other places

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Publications (2)


A Novel 3D Keypoint Detection Method based on Self-supervised Learning
  • Conference Paper

February 2025

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1 Read

Hui Wang

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Hongjuan Gao

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Wei Jia

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Jinhua Wu

The proposed denoising approach.
Geometry and color information of a vertex in a point cloud.
Illustration of the patch v2, v7 and their adjacent patches.
Three-dimensional point clouds of cultural relics: (a–f) terracotta warrior fragments numbered G3-I-b-70, 4#yt, G10-52, G10-46-5, G3-I-C-94, and G10-11-43(47); (g,h) Qin Dynasty tiles numbered Q002789 and Q003418; (i,j) Tang tri-color Hu terracotta sculptures numbered H73 and H80.
Effect of C* on MSE for G3−Ib−70.

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A Color- and Geometric-Feature-Based Approach for Denoising Three-Dimensional Cultural Relic Point Clouds
  • Article
  • Full-text available

April 2024

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28 Reads

In the acquisition process of 3D cultural relics, it is common to encounter noise. To facilitate the generation of high-quality 3D models, we propose an approach based on graph signal processing that combines color and geometric features to denoise the point cloud. We divide the 3D point cloud into patches based on self-similarity theory and create an appropriate underlying graph with a Markov property. The features of the vertices in the graph are represented using 3D coordinates, normal vectors, and color. We formulate the point cloud denoising problem as a maximum a posteriori (MAP) estimation problem and use a graph Laplacian regularization (GLR) prior to identifying the most probable noise-free point cloud. In the denoising process, we moderately simplify the 3D point to reduce the running time of the denoising algorithm. The experimental results demonstrate that our proposed approach outperforms five competing methods in both subjective and objective assessments. It requires fewer iterations and exhibits strong robustness, effectively removing noise from the surface of cultural relic point clouds while preserving fine-scale 3D features such as texture and ornamentation. This results in more realistic 3D representations of cultural relics.

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