IOVS4NeRF:Incremental Optimal View Selection for Large-Scale NeRFs
Neural Radiance Fields (NeRF) have recently demonstrated significant efficiency in the reconstruction of three-dimensional scenes and the synthesis of novel perspectives from a limited set of two-dimensional images. However, large-scale reconstruction using NeRF requires a substantial amount of aeri...
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Zusammenfassung: | Neural Radiance Fields (NeRF) have recently demonstrated significant
efficiency in the reconstruction of three-dimensional scenes and the synthesis
of novel perspectives from a limited set of two-dimensional images. However,
large-scale reconstruction using NeRF requires a substantial amount of aerial
imagery for training, making it impractical in resource-constrained
environments. This paper introduces an innovative incremental optimal view
selection framework, IOVS4NeRF, designed to model a 3D scene within a
restricted input budget. Specifically, our approach involves adding the
existing training set with newly acquired samples, guided by a computed novel
hybrid uncertainty of candidate views, which integrates rendering uncertainty
and positional uncertainty. By selecting views that offer the highest
information gain, the quality of novel view synthesis can be enhanced with
minimal additional resources. Comprehensive experiments substantiate the
efficiency of our model in realistic scenes, outperforming baselines and
similar prior works, particularly under conditions of sparse training data. |
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DOI: | 10.48550/arxiv.2407.18611 |