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Deep Generative Models: Deterministic Prediction with an Application in Inverse Rendering

机译:深度生成模型:确定性预测及其在逆向渲染中的应用

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Deep generative models are stochastic neural networks capable of learning the distribution of data so as to generate new samples. Conditional Variatonal Autoencoder (CVAE) is a powerful deep generative model aiming at maximizing the lower bound of training data log-likelihood. In this structure, there exists appropriate regularizer, which makes it applicable for suitably constraining the solution space in solving ill-posed problems and providing high generalization power. Considering the stochastic prediction characteristic in CVAE, depending on the problem at hand, it is desirable to be able to control the uncertainty in CVAE predictions. Therefore, in this paper we analyze the impact of CVAE's condition on the diversity of solutions given by our designed CVAE in 3D shape inverse rendering as a prediction problem. The experimental results using Modelnet10 and Shapenet datasets and comparison with several recent methods show the appropriate performance of our designed CVAE and verify the hypothesis: “The more informative the conditions in terms of object pose are, the less diverse the CVAE predictions are”.
机译:深度生成模型是能够学习数据分布从而生成新样本的随机神经网络。条件可变自编码器(CVAE)是强大的深度生成模型,旨在最大程度地提高训练数据对数似然的下限。在这种结构中,存在适当的正则化器,这使其适用于在解决不适定问题和提供高泛化能力时适当地限制解空间。考虑到CVAE中的随机预测特性,取决于当前的问题,希望能够控制CVAE预测中的不确定性。因此,在本文中,我们分析了CVAE条件对我们设计的CVAE在3D形状逆向渲染中作为预测问题给出的解决方案多样性的影响。使用Modelnet10和Shapenet数据集进行的实验结果以及与几种最新方法的比较表明,我们设计的CVAE具有适当的性能,并验证了这一假设:“关于物体姿态的信息越丰富,CVAE预测的多样性就越少。”

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