This paper introduces LeC$^2$O-NeRF, a novel method for learning a continuous and compact occupancy representation for large-scale urban scenes in Neural Radiance Fields (NeRFs) to significantly improve the efficiency of NeRF training without sacrificing accuracy.
This paper introduces a novel method for enhancing Neural Radiance Fields (NeRF) to accurately model and render planar reflections, improving the realism and accuracy of scene reconstruction for novel view synthesis.
ProvNeRF improves the accuracy and uncertainty estimation of Neural Radiance Fields (NeRFs) by explicitly modeling the probability distribution of camera positions from which each 3D point is visible, thereby enhancing scene reconstruction and enabling more reliable uncertainty quantification in challenging sparse view scenarios.
Gumbel-NeRF improves upon existing Neural Radiance Field methods by introducing a novel expert selection mechanism and training strategy, enabling the synthesis of high-quality novel views of unseen objects from limited input data.
Optimizing sampling point placement within a Neural Radiance Field framework, using an MLP-Mixer inspired architecture, reduces rendering artifacts and improves the quality of novel viewpoint image generation.
Incorporating readily available depth information as supervision significantly improves the performance of Neural Radiance Fields (NeRF) for view synthesis, particularly in scenarios with limited training views, by accelerating training and enhancing the accuracy of rendered geometry.
TD-NeRF leverages readily available monocular depth priors to simultaneously optimize camera poses and neural radiance fields, achieving superior performance in novel view synthesis and pose estimation, particularly in challenging scenarios with large motion changes.
DeformRF is a novel method that enhances Neural Radiance Fields (NeRFs) by integrating deformable tetrahedral meshes, enabling efficient and realistic 3D object manipulation and animation while maintaining high-quality rendering.
새로운 두 단계 학습 방법을 소개하여 3D 실내 재구성을 개선합니다.
Ein tiefes Lernrahmenwerk, NeWRF, ermöglicht präzise Vorhersagen drahtloser Kanäle mit geringer Messdichte.