CU-Multi: A Dataset for Multi-Robot Data Association
CU-Multi: A Dataset for Multi-Robot Data Association
Multi-robot systems (MRSs) are valuable for tasks such as search and rescue due to their ability to coordinate over shared observations. A central challenge in these systems is aligning independently collected perception data across space and time, i.e., multi-robot data association. While recent advances in collaborative SLAM (C-SLAM), map merging, and inter-robot loop closure detection have significantly progressed the field, evaluation strategies still predominantly rely on splitting a single trajectory from single-robot SLAM datasets into multiple segments to simulate multiple robots. Without careful consideration to how a single trajectory is split, this approach will fail to capture realistic pose-dependent variation in observations of a scene inherent to multi-robot systems. To address this gap, we present CU-Multi, a multi-robot dataset collected over multiple days at two locations on the University of Colorado Boulder campus. Using a single robotic platform, we generate four synchronized runs with aligned start times and deliberate percentages of trajectory overlap. CU-Multi includes RGB-D, GPS with accurate geospatial heading, and semantically annotated LiDAR data. By introducing controlled variations in trajectory overlap and dense lidar annotations, CU-Multi offers a compelling alternative for evaluating methods in multi-robot data association. Instructions on accessing the dataset, support code, and the latest updates are publicly available at https://arpg.github.io/cumulti
Doncey Albin、Miles Mena、Annika Thomas、Harel Biggie、Xuefei Sun、Dusty Woods、Steve McGuire、Christoffer Heckman
计算技术、计算机技术
Doncey Albin,Miles Mena,Annika Thomas,Harel Biggie,Xuefei Sun,Dusty Woods,Steve McGuire,Christoffer Heckman.CU-Multi: A Dataset for Multi-Robot Data Association[EB/OL].(2025-05-23)[2025-06-07].https://arxiv.org/abs/2505.17576.点此复制
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