Adaptive multipath-based SLAM for distributed MIMO systems
(2025)- Abstract
- Localizing users and mapping the environment using radio signals is a key task in emerging applications such as reliable communications, location-aware security, and safety critical navigation. Recently introduced multipath-based simultaneous localization and mapping (MP-SLAM) can jointly localize a mobile agent and the reflective surfaces in radio frequency (RF) environments. Most existing MP-SLAM methods assume that map features and their corresponding RF propagation paths are statistically independent, which neglects inherent dependencies arising when a single reflective surface contributes to different propagation paths or when an agent communicates with more than one base station. Previous approaches that aim to fuse information... (More)
- Localizing users and mapping the environment using radio signals is a key task in emerging applications such as reliable communications, location-aware security, and safety critical navigation. Recently introduced multipath-based simultaneous localization and mapping (MP-SLAM) can jointly localize a mobile agent and the reflective surfaces in radio frequency (RF) environments. Most existing MP-SLAM methods assume that map features and their corresponding RF propagation paths are statistically independent, which neglects inherent dependencies arising when a single reflective surface contributes to different propagation paths or when an agent communicates with more than one base station. Previous approaches that aim to fuse information across propagation paths are limited by their inability to perform ray tracing in environments with nonconvex geometries. In this paper, we propose a Bayesian MP-SLAM method for distributed MIMO systems that addresses this limitation. In particular, we use amplitude statistics to establish adaptive time-varying detection probabilities. Based on the resulting "soft" ray-tracing strategy, our method can fuse information across propagation paths in RF environments with nonconvex geometries. A Bayesian estimation method for the joint estimation of map features and agent position is established by applying the message passing rules of the sum-product algorithm (SPA) to the factor graph that represents the proposed statistical model. We also introduce an improved proposal PDF for particle-based computation of SPA messages. This proposal PDF enables the early detection of new surfaces that are solely supported by double-bounce paths. Our method is validated using synthetic RF measurements in a challenging scenario with nonconvex geometries. The results demonstrate that it can provide accurate localization and mapping estimates as well as attain the posterior CRLB. (Less)
Please use this url to cite or link to this publication:
https://lup.lub.lu.se/record/d8722d2b-c4ad-47a7-9bf4-9c140df4e983
- author
- Li, Xuhong LU ; Deutschmann, Benjamin J. B. ; Leitinger, Erik and Meyer, Florian
- organization
- publishing date
- 2025
- type
- Working paper/Preprint
- publication status
- published
- subject
- pages
- 30 pages
- DOI
- 10.48550/arXiv.2506.21798
- language
- English
- LU publication?
- yes
- id
- d8722d2b-c4ad-47a7-9bf4-9c140df4e983
- date added to LUP
- 2026-01-04 23:32:01
- date last changed
- 2026-01-07 11:31:32
@misc{d8722d2b-c4ad-47a7-9bf4-9c140df4e983,
abstract = {{Localizing users and mapping the environment using radio signals is a key task in emerging applications such as reliable communications, location-aware security, and safety critical navigation. Recently introduced multipath-based simultaneous localization and mapping (MP-SLAM) can jointly localize a mobile agent and the reflective surfaces in radio frequency (RF) environments. Most existing MP-SLAM methods assume that map features and their corresponding RF propagation paths are statistically independent, which neglects inherent dependencies arising when a single reflective surface contributes to different propagation paths or when an agent communicates with more than one base station. Previous approaches that aim to fuse information across propagation paths are limited by their inability to perform ray tracing in environments with nonconvex geometries. In this paper, we propose a Bayesian MP-SLAM method for distributed MIMO systems that addresses this limitation. In particular, we use amplitude statistics to establish adaptive time-varying detection probabilities. Based on the resulting "soft" ray-tracing strategy, our method can fuse information across propagation paths in RF environments with nonconvex geometries. A Bayesian estimation method for the joint estimation of map features and agent position is established by applying the message passing rules of the sum-product algorithm (SPA) to the factor graph that represents the proposed statistical model. We also introduce an improved proposal PDF for particle-based computation of SPA messages. This proposal PDF enables the early detection of new surfaces that are solely supported by double-bounce paths. Our method is validated using synthetic RF measurements in a challenging scenario with nonconvex geometries. The results demonstrate that it can provide accurate localization and mapping estimates as well as attain the posterior CRLB.}},
author = {{Li, Xuhong and Deutschmann, Benjamin J. B. and Leitinger, Erik and Meyer, Florian}},
language = {{eng}},
note = {{Preprint}},
title = {{Adaptive multipath-based SLAM for distributed MIMO systems}},
url = {{http://dx.doi.org/10.48550/arXiv.2506.21798}},
doi = {{10.48550/arXiv.2506.21798}},
year = {{2025}},
}