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GRAND-SLAM: Local Optimization for Globally Consistent Large-Scale Multi-Agent Gaussian SLAM

About

3D Gaussian splatting has emerged as an expressive scene representation for RGB-D visual SLAM, but its application to large-scale, multi-agent outdoor environments remains unexplored. Multi-agent Gaussian SLAM is a promising approach to rapid exploration and reconstruction of environments, offering scalable environment representations, but existing approaches are limited to small-scale, indoor environments. To that end, we propose Gaussian Reconstruction via Multi-Agent Dense SLAM, or GRAND-SLAM, a collaborative Gaussian splatting SLAM method that integrates i) an implicit tracking module based on local optimization over submaps and ii) an approach to inter- and intra-robot loop closure integrated into a pose-graph optimization framework. Experiments show that GRAND-SLAM provides state-of-the-art tracking performance and 28% higher PSNR than existing methods on the Replica indoor dataset, as well as 91% lower multi-agent tracking error and improved rendering over existing multi-agent methods on the large-scale, outdoor Kimera-Multi dataset.

Annika Thomas, Aneesa Sonawalla, Alex Rose, Jonathan P. How• 2025

Related benchmarks

TaskDatasetResultRank
Multi-agent TrackingReplicaMultiagent Apartment-1
ATE RMSE (Agent 1) [cm]0.28
10
Multi-agent TrackingReplicaMultiagent Apartment-2
ATE RMSE (cm) (Agent 1)0.18
9
Multi-agent TrackingReplicaMultiagent Office-0
ATE RMSE (Agent 1) [cm]0.28
9
Multi-agent TrackingReplicaMultiagent Apartment-0
ATE RMSE (Agent 1) [cm]0.27
9
Multi-agent rendering qualityReplicaMultiagent Apartment-0
PSNR44.15
8
Multi-agent rendering qualityReplicaMultiagent Apartment-1
PSNR38.65
8
Multi-agent rendering qualityReplicaMultiagent Apartment-2
PSNR39.46
8
Multi-agent rendering qualityReplicaMultiagent Office-0
PSNR43.12
8
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