Recently, Neural Radiance Fields (NeRF) has shown promising performances on reconstructing 3D scenes and synthesizing novel views from a sparse set of 2D images. Albeit effective, the performance of NeRF is highly influenced by the quality of training samples. With limited posed images from the scene, NeRF fails to generalize well to novel views and may collapse to trivial solutions in unobserved regions. This makes NeRF impractical under resource-constrained scenarios. In this paper, we present a novel learning framework, ActiveNeRF, aiming to model a 3D scene with a constrained input budget. Specifically, we first incorporate uncertainty estimation into a NeRF model, which ensures robustness under few observations and provides an interpretation of how NeRF understands the scene. On this basis, we propose to supplement the existing training set with newly captured samples based on an active learning scheme. By evaluating the reduction of uncertainty given new inputs, we select the samples that bring the most information gain. In this way, the quality of novel view synthesis can be improved with minimal additional resources. Extensive experiments validate the performance of our model on both realistic and synthetic scenes, especially with scarcer training data. Code will be released at \url{https://github.com/LeapLabTHU/ActiveNeRF}.
翻译:最近,Neoral Radiance Fields(NeRF)在重建三维场景和综合一组零星的二维图像的新观点方面表现良好。尽管效果有效,NeRF的表现受到培训样本质量的高度影响。由于现场提供的图像有限,NeRF未能对新观点进行广泛归纳,并有可能在未观测到的区域陷入微不足道的解决方案。这使NeRF在资源紧张的情景下不切实际。在本文件中,我们提出了一个新的学习框架,即Penter NeRF,目的是用有限的投入预算来模拟三维场景。具体地说,我们首先将不确定性估计纳入NeRF模型,在少数观察下确保稳健,并解释NeRF如何理解场景。在此基础上,我们提议以一个积极的学习计划为基础,用新采集的样本来补充现有的培训。通过评估不确定性的减少,我们选择能够带来最大信息收益的样本。这样,新观点合成的质量可以用最低限度的额外资源加以改进。在现实和合成场景/合成场景上进行广泛的实验,特别是在稀有的A/RU/RPRDRDRD/RDRDA/RDA/RDRD 。 将公布数据中公布。