论文标题
条件流nerf:具有可靠的不确定性定量的准确3D建模
Conditional-Flow NeRF: Accurate 3D Modelling with Reliable Uncertainty Quantification
论文作者
论文摘要
基于神经辐射场(NERF)的当前方法的一个关键局限性是他们无法量化与现场的外观和几何形状相关的不确定性。这些信息在实际应用中至关重要,例如医学诊断或自动驾驶,为了减少潜在的灾难性故障,对模型输出的信心必须包括在决策过程中。在这种情况下,我们介绍了有条件流的NERF(CF-NERF),这是一种新型的概率框架,将不确定性量化纳入基于NERF的方法中。为此,我们的方法学习了所有可能的辐射场模型上的分布,该模型用于量化与建模场景相关的不确定性。与以前的方法相比,通过耦合潜在可变建模和有条件的归一化流,CF-NERF以灵活且完全数据驱动的方式学习了强大的限制。该策略允许在保持模型表达性的同时获得可靠的不确定性估计。与先前提出的用于NERF不确定性定量的最新方法相比,我们的实验表明,该方法的预测误差明显降低,并且对于合成的新型视图和深度图估计,提出的方法明显降低了预测误差和更可靠的不确定性值。
A critical limitation of current methods based on Neural Radiance Fields (NeRF) is that they are unable to quantify the uncertainty associated with the learned appearance and geometry of the scene. This information is paramount in real applications such as medical diagnosis or autonomous driving where, to reduce potentially catastrophic failures, the confidence on the model outputs must be included into the decision-making process. In this context, we introduce Conditional-Flow NeRF (CF-NeRF), a novel probabilistic framework to incorporate uncertainty quantification into NeRF-based approaches. For this purpose, our method learns a distribution over all possible radiance fields modelling which is used to quantify the uncertainty associated with the modelled scene. In contrast to previous approaches enforcing strong constraints over the radiance field distribution, CF-NeRF learns it in a flexible and fully data-driven manner by coupling Latent Variable Modelling and Conditional Normalizing Flows. This strategy allows to obtain reliable uncertainty estimation while preserving model expressivity. Compared to previous state-of-the-art methods proposed for uncertainty quantification in NeRF, our experiments show that the proposed method achieves significantly lower prediction errors and more reliable uncertainty values for synthetic novel view and depth-map estimation.