Lightning NeRF introduces an efficient hybrid scene representation that leverages LiDAR data, improving novel view synthesis quality and rendering speed significantly.
Thermal-NeRF introduces a method to estimate NeRF solely from IR imaging, outperforming RGB-based methods in visually degraded scenes.
SpikeNeRF introduces a novel approach to deriving volumetric scene representations from spike camera data using NeRF, addressing challenges in real-world scenarios.
新しい二段階学習アプローチ、H2O-SDFは、屋内シーンの全体的なジオメトリを再構築し、色と法線情報の衝突を解決します。
SpikeNeRFは、スパイクカメラからのニューラル放射輝度場学習を可能にする初の手法です。
Efficient large-scale scene rendering using an LoD octree structure.
InfNeRF introduces an innovative approach to large-scale scene rendering using Neural Radiance Fields and octree structures, achieving efficient rendering with reduced memory footprint.
Innovative Entity-NeRF method effectively removes moving objects and reconstructs static urban backgrounds.
提案されたCVT-xRFは、3D空間の一貫性を向上させるために新しいアプローチを提供します。
InsertNeRF introduces a novel paradigm by utilizing HyperNet modules to instill generalizability into NeRF, enhancing scene-specific representations and improving performance.