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No Pose, No Problem: Surprisingly Simple 3D Gaussian Splats from Sparse Unposed Images

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We introduce NoPoSplat, a feed-forward model capable of reconstructing 3D scenes parameterized by 3D Gaussians from \textit{unposed} sparse multi-view images. Our model, trained exclusively with photometric loss, achieves real-time 3D Gaussian reconstruction during inference. To eliminate the need for accurate pose input during reconstruction, we anchor one input view's local camera coordinates as the canonical space and train the network to predict Gaussian primitives for all views within this space. This approach obviates the need to transform Gaussian primitives from local coordinates into a global coordinate system, thus avoiding errors associated with per-frame Gaussians and pose estimation. To resolve scale ambiguity, we design and compare various intrinsic embedding methods, ultimately opting to convert camera intrinsics into a token embedding and concatenate it with image tokens as input to the model, enabling accurate scene scale prediction. We utilize the reconstructed 3D Gaussians for novel view synthesis and pose estimation tasks and propose a two-stage coarse-to-fine pipeline for accurate pose estimation. Experimental results demonstrate that our pose-free approach can achieve superior novel view synthesis quality compared to pose-required methods, particularly in scenarios with limited input image overlap. For pose estimation, our method, trained without ground truth depth or explicit matching loss, significantly outperforms the state-of-the-art methods with substantial improvements. This work makes significant advances in pose-free generalizable 3D reconstruction and demonstrates its applicability to real-world scenarios. Code and trained models are available at https://noposplat.github.io/.

Botao Ye, Sifei Liu, Haofei Xu, Xueting Li, Marc Pollefeys, Ming-Hsuan Yang, Songyou Peng• 2024

Related benchmarks

TaskDatasetResultRank
Novel View SynthesisRE10K
SSIM87.8
142
Monocular Depth EstimationNYU V2
Delta 1 Acc0.423
131
Novel View SynthesisScanNet
PSNR25.55
130
Novel View SynthesisDTU
PSNR17.899
115
Novel View SynthesisDL3DV
PSNR18.235
84
Novel View SynthesisRe10K (test)
PSNR13.47
79
Novel View SynthesisACID
PSNR25.765
71
Novel View SynthesisScanNet++
PSNR22.136
67
Novel View SynthesisDL3DV (test)
PSNR15.53
61
Relative Pose EstimationScanNet 1500 pairs (test)
AUC@5°31.8
56
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