PF3plat: Pose-Free Feed-Forward 3D Gaussian Splatting
We consider the problem of novel view synthesis from unposed images in a single feed-forward. Our framework capitalizes on fast speed, scalability, and high-quality 3D reconstruction and view synthesis capabilities of 3DGS, where we further extend it to offer a practical solution that relaxes common...
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Zusammenfassung: | We consider the problem of novel view synthesis from unposed images in a
single feed-forward. Our framework capitalizes on fast speed, scalability, and
high-quality 3D reconstruction and view synthesis capabilities of 3DGS, where
we further extend it to offer a practical solution that relaxes common
assumptions such as dense image views, accurate camera poses, and substantial
image overlaps. We achieve this through identifying and addressing unique
challenges arising from the use of pixel-aligned 3DGS: misaligned 3D Gaussians
across different views induce noisy or sparse gradients that destabilize
training and hinder convergence, especially when above assumptions are not met.
To mitigate this, we employ pre-trained monocular depth estimation and visual
correspondence models to achieve coarse alignments of 3D Gaussians. We then
introduce lightweight, learnable modules to refine depth and pose estimates
from the coarse alignments, improving the quality of 3D reconstruction and
novel view synthesis. Furthermore, the refined estimates are leveraged to
estimate geometry confidence scores, which assess the reliability of 3D
Gaussian centers and condition the prediction of Gaussian parameters
accordingly. Extensive evaluations on large-scale real-world datasets
demonstrate that PF3plat sets a new state-of-the-art across all benchmarks,
supported by comprehensive ablation studies validating our design choices. |
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DOI: | 10.48550/arxiv.2410.22128 |