SIREN: Semantic, Initialization-Free Registration of Multi-Robot Gaussian Splatting Maps
Ola Shorinwa, Jiankai Sun, Mac Schwager, Anirudha Majumdar

TL;DR
SIREN is a novel registration method for multi-robot Gaussian Splatting maps that uses semantics to achieve initialization-free, high-accuracy map fusion across diverse robot platforms without prior pose information.
Contribution
SIREN introduces a semantics-based registration pipeline that eliminates the need for initialization and improves accuracy in multi-robot map fusion using Gaussian Splatting.
Findings
Achieves 90x smaller rotation errors compared to baselines
Attains 300x smaller translation errors
Performs robustly across various robot platforms
Abstract
We present SIREN for registration of multi-robot Gaussian Splatting (GSplat) maps, with zero access to camera poses, images, and inter-map transforms for initialization or fusion of local submaps. To realize these capabilities, SIREN harnesses the versatility and robustness of semantics in three critical ways to derive a rigorous registration pipeline for multi-robot GSplat maps. First, SIREN utilizes semantics to identify feature-rich regions of the local maps where the registration problem is better posed, eliminating the need for any initialization which is generally required in prior work. Second, SIREN identifies candidate correspondences between Gaussians in the local maps using robust semantic features, constituting the foundation for robust geometric optimization, coarsely aligning 3D Gaussian primitives extracted from the local maps. Third, this key step enables subsequent…
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Taxonomy
TopicsData Management and Algorithms · Image Processing and 3D Reconstruction
