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SPARF: Neural Radiance Fields from Sparse and Noisy Poses

About

Neural Radiance Field (NeRF) has recently emerged as a powerful representation to synthesize photorealistic novel views. While showing impressive performance, it relies on the availability of dense input views with highly accurate camera poses, thus limiting its application in real-world scenarios. In this work, we introduce Sparse Pose Adjusting Radiance Field (SPARF), to address the challenge of novel-view synthesis given only few wide-baseline input images (as low as 3) with noisy camera poses. Our approach exploits multi-view geometry constraints in order to jointly learn the NeRF and refine the camera poses. By relying on pixel matches extracted between the input views, our multi-view correspondence objective enforces the optimized scene and camera poses to converge to a global and geometrically accurate solution. Our depth consistency loss further encourages the reconstructed scene to be consistent from any viewpoint. Our approach sets a new state of the art in the sparse-view regime on multiple challenging datasets.

Prune Truong, Marie-Julie Rakotosaona, Fabian Manhardt, Federico Tombari• 2022

Related benchmarks

TaskDatasetResultRank
Novel View SynthesisDTU 6-view
PSNR25.76
49
Novel View SynthesisNeRF Synthetic (test)--
36
Novel View SynthesisDTU Object 3-view
PSNR21.26
14
Novel View SynthesisDTU Object 9-view
PSNR27.3
14
Novel View SynthesisDTU 3-view setting (test)
PSNR21.01
13
Novel View SynthesisDTU Full-image 3-view
PSNR18.32
13
Novel View SynthesisDTU Full-image 9-view
PSNR25.75
13
Novel View SynthesisDTU 3-view
LPIPS (Full-image)0.21
12
Novel View SynthesisDTU 9-view
Full-image LPIPS0.08
12
Few-shot Novel View SynthesisLLFF static scenes 3 views
PSNR19.86
10
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