Abstract

Most indoor environments have wheelchair adaptations or ramps, providing an opportunity for mobile robots to navigate sloped areas avoiding steps. These indoor environments with integrated sloped areas are divided into different levels. The multi-level areas represent a challenge for mobile robot navigation due to the sudden change in reference sensors as visual, inertial, or laser scan instruments. Using multiple cooperative robots is advantageous for mapping and localization since they permit rapid exploration of the environment and provide higher redundancy than using a single robot. This study proposes a multi-robot localization using two robots (leader and follower) to perform a fast and robust environment exploration on multi-level areas. The leader robot is equipped with a 3D LIDAR for 2.5D mapping and a Kinect camera for RGB image acquisition. Using 3D LIDAR, the leader robot obtains information for particle localization, with particles sampled from the walls and obstacle tangents. We employ a convolutional neural network on the RGB images for multi-level area detection. Once the leader robot detects a multi-level area, it generates a path and sends a notification to the follower robot to go into the detected location. The follower robot utilizes a 2D LIDAR to explore the boundaries of the even areas and generate a 2D map using an extension of the iterative closest point. The 2D map is utilized as a re-localization resource in case of failure of the leader robot.

Highlights

  • For mapping and localization on an uneven or multi-level surface, 3D LIDAR is needed

  • We propose a multi-robot localization using a Monte Carlo algorithm from our previous study [1]

  • Our multi-robot system has two robots: Robot A and Robot B

Read more

Summary

Introduction

For mapping and localization on an uneven or multi-level surface, 3D LIDAR is needed. The price of a 3D LIDAR is very high, and the required computing power and resources are high. A single small robot cannot process both 3D localization and mapping for real-time navigation. Since our previous work [1] studied mapping and localization on uneven surfaces, we decided to extend the experiment using a second robot. The mapping and exploration time is simplified, and the computational time is improved. The present experiment intends to provide a starting point for a bigger multi-robot team, where the more robots, the faster the mapping task could be performed

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call