Occupancy Grid Map to Pose Graph-based Map: Robust BIM-based 2D-LiDAR Localization for Lifelong Indoor Navigation in Changing and Dynamic Environments

Several studies rely on the de facto standard Adaptive Monte Carlo Localization (AMCL) method to localize a robot in an Occupancy Grid Map (OGM) extracted from a building information model (BIM model). However, most of these studies assume that the BIM model precisely represents the real world, which is rarely true. Discrepancies between the reference BIM model and the real world (Scan-BIM deviations) are not only due to furniture or clutter but also the usual as-planned and as-built deviations that exist with any model created in the design phase. These deviations affect the accuracy of AMCL drastically. This paper proposes an open-source method to generate appropriate Pose Graph-based maps from BIM models for robust 2D-LiDAR localization in changing and dynamic environments. First, 2D OGMs are automatically generated from complex BIM models. These OGMs only represent structural elements allowing indoor autonomous robot navigation. Then, an efficient technique converts these 2D OGMs into Pose Graph-based maps enabling more accurate robot pose tracking. Finally, we leverage the different map representations for accurate, robust localization with a combination of state-of-the-art algorithms. Moreover, we provide a quantitative comparison of various state-of-the-art localization algorithms in three simulated scenarios with varying levels of Scan-BIM deviations and dynamic agents. More precisely, we compare two Particle Filter (PF) algorithms: AMCL and General Monte Carlo Localization (GMCL); and two Graph-based Localization (GBL) methods: Google's Cartographer and SLAM Toolbox, solving the global localization and pose tracking problems. The numerous experiments demonstrate that the proposed method contributes to a robust localization with an as-designed BIM model or a sparse OGM in changing and dynamic environments, outperforming the conventional AMCL in accuracy and robustness.

READ FULL TEXT

page 4

page 5

page 6

research
03/08/2022

ROLL: Long-Term Robust LiDAR-based Localization With Temporary Mapping in Changing Environments

Long-term scene changes present challenges to localization systems using...
research
09/01/2020

A Samplable Multimodal Observation Model for Global Localization and Kidnapping

Global localization and kidnapping are two challenging problems in robot...
research
07/26/2023

CBGL: Fast Monte Carlo Passive Global Localisation of 2D LIDAR Sensor

Navigation of a mobile robot is conditioned on the knowledge of its pose...
research
03/05/2019

Robot Localization in Floor Plans Using a Room Layout Edge Extraction Network

Indoor localization is one of the crucial enablers for deployment of ser...
research
03/08/2019

Recognizing and Tracking High-Level, Human-Meaningful Navigation Features of Occupancy Grid Maps

This paper describes a system whereby a robot detects and track human-me...
research
03/23/2022

Robust Onboard Localization in Changing Environments Exploiting Text Spotting

Robust localization in a given map is a crucial component of most autono...
research
10/06/2022

IR-MCL: Implicit Representation-Based Online Global Localization

Determining the state of a mobile robot is an essential building block o...

Please sign up or login with your details

Forgot password? Click here to reset