Michael, EladSummers, TylerWood, Tony A.Manzie, ChrisShames, Iman2023-03-272023-03-272023-03-272022-01-0110.1109/IROS47612.2022.9981750https://infoscience.epfl.ch/handle/20.500.14299/196528WOS:000908368203042With advances in image processing and machine learning, it is now feasible to incorporate semantic information into the problem of simultaneous localisation and mapping (SLAM). Previously, SLAM was carried out using lower level geometric features (points, lines, and planes) which are often view-point dependent and error prone in visually repetitive environments. Semantic information can improve the ability to recognise previously visited locations, as well as maintain sparser maps for long term SLAM applications. However, SLAM in repetitive environments has the critical problem of assigning measurements to the landmarks which generated them. In this paper, we use k-best assignment enumeration to compute marginal assignment probabilities for each measurement landmark pair, in real time. We present numerical studies on the KITTI dataset to demonstrate the effectiveness and speed of the proposed framework.Automation & Control SystemsComputer Science, Artificial IntelligenceEngineering, Electrical & ElectronicRoboticsAutomation & Control SystemsComputer ScienceEngineeringRoboticslocalizationalgorithmProbabilistic Data Association for Semantic SLAM at Scaletext::conference output::conference proceedings::conference paper