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GloSplat: Joint Pose-Appearance Optimization for Faster and More Accurate 3D Reconstruction

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Feature extraction, matching, structure from motion (SfM), and novel view synthesis (NVS) have traditionally been treated as separate problems with independent optimization objectives. We present GloSplat, a framework that performs \emph{joint pose-appearance optimization} during 3D Gaussian Splatting training. Unlike prior joint optimization methods (BARF, NeRF--, 3RGS) that rely purely on photometric gradients for pose refinement, GloSplat preserves \emph{explicit SfM feature tracks} as first-class entities throughout training: track 3D points are maintained as separate optimizable parameters from Gaussian primitives, providing persistent geometric anchors via a reprojection loss that operates alongside photometric supervision. This architectural choice prevents early-stage pose drift while enabling fine-grained refinement -- a capability absent in photometric-only approaches. We introduce two pipeline variants: (1) \textbf{GloSplat-F}, a COLMAP-free variant using retrieval-based pair selection for efficient reconstruction, and (2) \textbf{GloSplat-A}, an exhaustive matching variant for maximum quality. Both employ global SfM initialization followed by joint photometric-geometric optimization during 3DGS training. Experiments demonstrate that GloSplat-F achieves state-of-the-art among COLMAP-free methods while GloSplat-A surpasses all COLMAP-based baselines.

Tianyu Xiong, Rui Li, Linjie Li, Jiaqi Yang• 2026

Related benchmarks

TaskDatasetResultRank
Novel View SynthesisMip-NeRF360
PSNR28.86
138
Novel View SynthesisScanNet
PSNR33.42
130
Camera pose estimationScanNet--
119
Novel View SynthesisTanks&Temples
PSNR25.82
95
Novel View SynthesisCO3D v2
PSNR32.71
8
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