论文标题
3D形状建模和重建的深度优化先验
Deep Optimized Priors for 3D Shape Modeling and Reconstruction
论文作者
论文摘要
许多基于学习的方法都难以扩展数据来看不见数据,因为其先验的一般性仅限于培训样本的规模和变化。考虑到3D数据集的稀疏性,3D学习任务尤其如此。我们引入了一个新的学习框架,用于3D建模和重建,从而大大提高了深层发电机的概括能力。我们的方法致力于连接基于学习的方法和基于优化的方法的良好目的。特别是,与在测试时间修复预训练的先验的常见实践不同,我们建议根据培训后的输入物理测量值进一步优化所学的先验和潜在代码。我们表明,所提出的策略有效地打破了受预先训练的先验限制的障碍,并可能导致高质量的适应性对看不见的数据。我们使用隐式表面表示,并验证方法在各种具有挑战性的任务中验证方法的功效,这些任务将高度稀疏或崩溃的观察结果作为输入。实验结果表明,我们的方法与最先进的方法相比,从一般性和准确性方面进行了比较。
Many learning-based approaches have difficulty scaling to unseen data, as the generality of its learned prior is limited to the scale and variations of the training samples. This holds particularly true with 3D learning tasks, given the sparsity of 3D datasets available. We introduce a new learning framework for 3D modeling and reconstruction that greatly improves the generalization ability of a deep generator. Our approach strives to connect the good ends of both learning-based and optimization-based methods. In particular, unlike the common practice that fixes the pre-trained priors at test time, we propose to further optimize the learned prior and latent code according to the input physical measurements after the training. We show that the proposed strategy effectively breaks the barriers constrained by the pre-trained priors and could lead to high-quality adaptation to unseen data. We realize our framework using the implicit surface representation and validate the efficacy of our approach in a variety of challenging tasks that take highly sparse or collapsed observations as input. Experimental results show that our approach compares favorably with the state-of-the-art methods in terms of both generality and accuracy.