Laser-Based Door Localization for Autonomous Mobile Service Robots

Sensors (Basel). 2023 May 31;23(11):5247. doi: 10.3390/s23115247.

Abstract

For autonomous mobile service robots, closed doors that are in their way are restricting obstacles. In order to open doors with on-board manipulation skills, a robot needs to be able to localize the door's key features, such as the hinge and handle, as well as the current opening angle. While there are vision-based approaches for detecting doors and handles in images, we concentrate on analyzing 2D laser range scans. This requires less computational effort, and laser-scan sensors are available on most mobile robot platforms. Therefore, we developed three different machine learning approaches and a heuristic method based on line fitting able to extract the required position data. The algorithms are compared with respect to localization accuracy with help of a dataset containing laser range scans of doors. Our LaserDoors dataset is publicly available for academic use. Pros and cons of the individual methods are discussed; basically, the machine learning methods could outperform the heuristic method, but require special training data when applied in a real application.

Keywords: PointNet; deep learning; door localization; laser range scan.

MeSH terms

  • Algorithms
  • Lasers
  • Machine Learning
  • Robotics* / methods
  • Vision, Ocular