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RGB-D Neural Radiance Fields: Local Sampling for Faster Training

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arxiv 2203.15587 v2 pith:T6GWUNH2 submitted 2022-03-26 cs.CV

RGB-D Neural Radiance Fields: Local Sampling for Faster Training

classification cs.CV
keywords neuraltraininglocalsamplingtimefasterfieldsnerf
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Learning a 3D representation of a scene has been a challenging problem for decades in computer vision. Recent advances in implicit neural representation from images using neural radiance fields(NeRF) have shown promising results. Some of the limitations of previous NeRF based methods include longer training time, and inaccurate underlying geometry. The proposed method takes advantage of RGB-D data to reduce training time by leveraging depth sensing to improve local sampling. This paper proposes a depth-guided local sampling strategy and a smaller neural network architecture to achieve faster training time without compromising quality.

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