SymmNeRF: Learning to Explore Symmetry Prior for Single-View View Synthesis

Xingyi Li, Chaoyi Hong, Yiran Wang, Z. Cao, Ke Xian, Guosheng Lin
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引用次数: 10

Abstract

We study the problem of novel view synthesis of objects from a single image. Existing methods have demonstrated the potential in single-view view synthesis. However, they still fail to recover the fine appearance details, especially in self-occluded areas. This is because a single view only provides limited information. We observe that manmade objects usually exhibit symmetric appearances, which introduce additional prior knowledge. Motivated by this, we investigate the potential performance gains of explicitly embedding symmetry into the scene representation. In this paper, we propose SymmNeRF, a neural radiance field (NeRF) based framework that combines local and global conditioning under the introduction of symmetry priors. In particular, SymmNeRF takes the pixel-aligned image features and the corresponding symmetric features as extra inputs to the NeRF, whose parameters are generated by a hypernetwork. As the parameters are conditioned on the image-encoded latent codes, SymmNeRF is thus scene-independent and can generalize to new scenes. Experiments on synthetic and real-world datasets show that SymmNeRF synthesizes novel views with more details regardless of the pose transformation, and demonstrates good generalization when applied to unseen objects. Code is available at: https://github.com/xingyi-li/SymmNeRF.
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SymmNeRF:学习探索单视图视图合成的对称性先验
研究了单幅图像中目标的新视图合成问题。现有的方法已经证明了单视图视图合成的潜力。然而,它们仍然无法恢复精细的外观细节,特别是在自遮挡区域。这是因为单个视图只能提供有限的信息。我们观察到人造物体通常呈现对称的外观,这引入了额外的先验知识。基于此,我们研究了在场景表示中显式嵌入对称性的潜在性能增益。在本文中,我们提出了一个基于神经辐射场(NeRF)的框架,该框架在对称先验的引入下结合了局部和全局条件。特别是,SymmNeRF将像素对齐的图像特征和相应的对称特征作为NeRF的额外输入,NeRF的参数由超网络生成。由于参数以图像编码的潜在码为条件,因此SymmNeRF与场景无关,可以推广到新的场景。在合成数据集和真实世界数据集上的实验表明,无论姿态变换如何,SymmNeRF都可以合成具有更多细节的新视图,并且在应用于看不见的物体时表现出良好的泛化。代码可从https://github.com/xingyi-li/SymmNeRF获得。
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