GIRAFFE: Representing Scenes As Compositional Generative ...
works [50,51,66,81,92] propose differentiable rendering techniques. Mildenhall et al. [61] propose Neural Radiance Fields (NeRFs) in which they combine an implicit neural model with volume rendering for novel view synthesis of complex scenes. Due to their expressiveness, we use a generative variant of NeRFs as our object-level represen-tation.
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