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Vision Transformer for NeRF-Based View Synthesis from a Single Input Image

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arxiv 2207.05736 v2 pith:Z4PVSG5T submitted 2022-07-12 cs.CV cs.GR

Vision Transformer for NeRF-Based View Synthesis from a Single Input Image

classification cs.CV cs.GR
keywords featuresimagenovelsingleviewinputlocalnetwork
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Although neural radiance fields (NeRF) have shown impressive advances for novel view synthesis, most methods typically require multiple input images of the same scene with accurate camera poses. In this work, we seek to substantially reduce the inputs to a single unposed image. Existing approaches condition on local image features to reconstruct a 3D object, but often render blurry predictions at viewpoints that are far away from the source view. To address this issue, we propose to leverage both the global and local features to form an expressive 3D representation. The global features are learned from a vision transformer, while the local features are extracted from a 2D convolutional network. To synthesize a novel view, we train a multilayer perceptron (MLP) network conditioned on the learned 3D representation to perform volume rendering. This novel 3D representation allows the network to reconstruct unseen regions without enforcing constraints like symmetry or canonical coordinate systems. Our method can render novel views from only a single input image and generalize across multiple object categories using a single model. Quantitative and qualitative evaluations demonstrate that the proposed method achieves state-of-the-art performance and renders richer details than existing approaches.

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