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Title Cultural Heritage 3D Reconstruction with Diffusion Networks
Authors Pablo Jaramillo, Iván Sipirán
Publication date 2024
Abstract This article explores the use of recent generative AI
algorithms
for repairing cultural heritage objects, leveraging a conditional diffusion
model designed to reconstruct 3D point clouds effectively. Our study
evaluates the model's performance across general and cultural
heritage-specific settings. Results indicate that, with considerations for
object variability, the diffusion model can accurately reproduce cultural
heritage geometries. Despite encountering challenges like data diversity and
outlier sensitivity, the model demonstrates significant potential in
artifact restoration research. This work lays groundwork for advancing
restoration methodologies for ancient artifacts using AI technologies (The
dataset is available in:
https://github.com/PJaramilloV/Precolombian-Dataset, and the code in
https://github.com/PJaramilloV/pcdiff-method).
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Pages 104-117
Conference name ECCV Workshop on Vision for Art
Publisher Springer Nature Switzerland AG (Cham, Switzerland)
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Reference URL View reference page