Johari, Mohammad MahdiLepoittevin, YannFleuret, Francois2023-01-162023-01-162023-01-162022-01-0110.1109/CVPR52688.2022.01782https://infoscience.epfl.ch/handle/20.500.14299/193797WOS:000870783004017We present GeoNeRF, a generalizable photorealistic novel view synthesis method based on neural radiance fields. Our approach consists of two main stages: a geometry reasoner and a renderer. To render a novel view, the geometry reasoner first constructs cascaded cost volumes for each nearby source view. Then, using a Transformer-based attention mechanism and the cascaded cost volumes, the renderer infers geometry and appearance, and renders detailed images via classical volume rendering techniques. This architecture, in particular, allows sophisticated occlusion reasoning, gathering information from consistent source views. Moreover, our method can easily be fine-tuned on a single scene, and renders competitive results with per-scene optimized neural rendering methods with a fraction of computational cost. Experiments show that GeoNeRF outperforms state-of-the-art generalizable neural rendering models on various synthetic and real datasets. Lastly, with a slight modification to the geometry reasoner, we also propose an alternative model that adapts to RGBD images. This model directly exploits the depth information often available thanks to depth sensors.Computer Science, Artificial IntelligenceImaging Science & Photographic TechnologyComputer ScienceGeoNeRF: Generalizing NeRF with Geometry Priorstext::conference output::conference proceedings::conference paper