3D Reconstruction of Sculptures from Single Images via Unsupervised Domain Adaptation on Implicit Models

Ziyi Chang, G. Koulieris, Hubert P. H. Shum
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引用次数: 2

Abstract

Acquiring the virtual equivalent of exhibits, such as sculptures, in virtual reality (VR) museums, can be labour-intensive and sometimes infeasible. Deep learning based 3D reconstruction approaches allow us to recover 3D shapes from 2D observations, among which single-view-based approaches can reduce the need for human intervention and specialised equipment in acquiring 3D sculptures for VR museums. However, there exist two challenges when attempting to use the well-researched human reconstruction methods: limited data availability and domain shift. Considering sculptures are usually related to humans, we propose our unsupervised 3D domain adaptation method for adapting a single-view 3D implicit reconstruction model from the source (real-world humans) to the target (sculptures) domain. We have compared the generated shapes with other methods and conducted ablation studies as well as a user study to demonstrate the effectiveness of our adaptation method. We also deploy our results in a VR application.
基于隐式模型的无监督域自适应单幅图像雕塑三维重建
在虚拟现实(VR)博物馆中获得虚拟的展品,如雕塑,可能是劳动密集型的,有时是不可行的。基于深度学习的3D重建方法使我们能够从2D观察中恢复3D形状,其中基于单视图的方法可以减少人为干预和专门设备在为VR博物馆获取3D雕塑时的需求。然而,在尝试使用研究良好的人工重建方法时存在两个挑战:有限的数据可用性和领域转移。考虑到雕塑通常与人有关,我们提出了一种无监督三维域自适应方法,将单视图三维隐式重建模型从源(真实世界的人)适应到目标(雕塑)域。我们将生成的形状与其他方法进行了比较,并进行了消融研究和用户研究,以证明我们的适应方法的有效性。我们还将结果部署到VR应用程序中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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