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Splatt3R: Zero-shot Gaussian Splatting from Uncalibrated Image Pairs

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In this paper, we introduce Splatt3R, a pose-free, feed-forward method for in-the-wild 3D reconstruction and novel view synthesis from stereo pairs. Given uncalibrated natural images, Splatt3R can predict 3D Gaussian Splats without requiring any camera parameters or depth information. For generalizability, we build Splatt3R upon a ``foundation'' 3D geometry reconstruction method, MASt3R, by extending it to deal with both 3D structure and appearance. Specifically, unlike the original MASt3R which reconstructs only 3D point clouds, we predict the additional Gaussian attributes required to construct a Gaussian primitive for each point. Hence, unlike other novel view synthesis methods, Splatt3R is first trained by optimizing the 3D point cloud's geometry loss, and then a novel view synthesis objective. By doing this, we avoid the local minima present in training 3D Gaussian Splats from stereo views. We also propose a novel loss masking strategy that we empirically find is critical for strong performance on extrapolated viewpoints. We train Splatt3R on the ScanNet++ dataset and demonstrate excellent generalisation to uncalibrated, in-the-wild images. Splatt3R can reconstruct scenes at 4FPS at 512 x 512 resolution, and the resultant splats can be rendered in real-time.

Brandon Smart, Chuanxia Zheng, Iro Laina, Victor Adrian Prisacariu• 2024

Related benchmarks

TaskDatasetResultRank
Pose EstimationScanNet
AUC @ 5 deg1.1
41
Novel View SynthesisRE10K Small
PSNR17.789
38
Pose EstimationRE10K
AUC @ 5°0.158
35
Novel View SynthesisRE10K (Medium)
PSNR18.828
33
Novel View SynthesisRE10K (Average)
PSNR18.688
33
Novel View SynthesisRE10K Large
PSNR19.243
25
Pose EstimationACID
AUC @ 5°4.4
23
Novel View SynthesisACID Small
PSNR17.419
13
Novel View SynthesisACID Medium
PSNR18.257
13
Novel View SynthesisACID Large
PSNR18.134
13
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