Paper ID: 2503.06235 • Published Mar 8, 2025
StreamGS: Online Generalizable Gaussian Splatting Reconstruction for Unposed Image Streams
TL;DR
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The advent of 3D Gaussian Splatting (3DGS) has advanced 3D scene
reconstruction and novel view synthesis. With the growing interest of
interactive applications that need immediate feedback, online 3DGS
reconstruction in real-time is in high demand. However, none of existing
methods yet meet the demand due to three main challenges: the absence of
predetermined camera parameters, the need for generalizable 3DGS optimization,
and the necessity of reducing redundancy. We propose StreamGS, an online
generalizable 3DGS reconstruction method for unposed image streams, which
progressively transform image streams to 3D Gaussian streams by predicting and
aggregating per-frame Gaussians. Our method overcomes the limitation of the
initial point reconstruction \cite{dust3r} in tackling out-of-domain (OOD)
issues by introducing a content adaptive refinement. The refinement enhances
cross-frame consistency by establishing reliable pixel correspondences between
adjacent frames. Such correspondences further aid in merging redundant
Gaussians through cross-frame feature aggregation. The density of Gaussians is
thereby reduced, empowering online reconstruction by significantly lowering
computational and memory costs. Extensive experiments on diverse datasets have
demonstrated that StreamGS achieves quality on par with optimization-based
approaches but does so 150 times faster, and exhibits superior generalizability
in handling OOD scenes.
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