loading page

Aruco-LOAM:Integration of Aruco and LEGO-LOAM for SLAM of Autonomous Forklifts
  • +2
  • Junjie Xiao,
  • Guanling Wang,
  • Jun Cheng,
  • Buyun Wang,
  • Dezhang Xu
Junjie Xiao
Anhui Polytechnic University
Author Profile
Guanling Wang
Anhui Polytechnic University
Author Profile
Jun Cheng
Anhui Polytechnic University

Corresponding Author:chengjun@ahpu.edu.cn

Author Profile
Buyun Wang
Anhui Polytechnic University
Author Profile
Dezhang Xu
Anhui Polytechnic University
Author Profile

Abstract

With the development of industrial automation and intelligent logistics, the application of unmanned forklifts in warehousing and production environments has become increasingly widespread. However, the decline in positioning accuracy and the problem of drift seriously affect their stability and safety. Although existing LiDAR and inertial navigation systems have improved, they still face challenges related to cumulative errors during operation. This paper proposes a new algorithm called Aruco-LOAM, which significantly improves the positioning accuracy of unmanned forklifts by combining Aruco markers with LEGO-LOAM's LiDAR point cloud data and utilizing visual constraints during the graph optimization process. The research results indicate that this method suppresses cumulative errors and enhances the robustness of unmanned forklifts in complex environments, providing a more reliable navigation solution for warehousing systems.
12 Dec 2024Submitted to Journal of Field Robotics
14 Dec 2024Submission Checks Completed
14 Dec 2024Assigned to Editor
14 Dec 2024Review(s) Completed, Editorial Evaluation Pending
31 Dec 2024Reviewer(s) Assigned