Journal of Production Engineering

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Vol. 22 No. 2 (2019)
Original Research Article

Fusion of infrared sensors and camera for mobile robot navigation system - simulation scenario

Boris Crnokić
University of Mostar, Faculty of Mechanical Engineering, Matice hrvatske bb, 88000, Mostar Bosnia and Herzegovina
Miroslav Grubišić
University of Mostar, Faculty of Mechanical Engineering, Matice hrvatske bb, 88000, Mostar Bosnia and Herzegovina

Published 2019-12-30

abstract views: 33 // FULL TEXT ARTICLE (PDF): 17


Keywords

  • Mobile robot navigation,
  • Sensor fusion,
  • Infrared sensors,
  • Camera,
  • Artificial neural networks

How to Cite

Crnokić, Boris, and Miroslav Grubišić. 2019. “Fusion of Infrared Sensors and Camera for Mobile Robot Navigation System - Simulation Scenario”. Journal of Production Engineering 22 (2):25-29. https://doi.org/10.24867/JPE-2019-02-025.

Abstract

This paper presents a simulation scenario of a mobile robot navigation system. Navigation system is based on data collecting from three infrared sensors and camera, on which basis the fusion process of detection and avoidance of obstacles is realized. Information from camera was used to detect edges of the obstacles in the environment, while infrared sensors were used to measure the distance from the obstacles. Multilayer perceptron network, trained with backpropagation algorithm, was used for classification of detected obstacles. Experiment was realized through simulation in the simulation environment “Robotino SIM”. The control algorithm was implemented in MATLAB. Sensor fusion has proven to be a much better solution than using infrared sensors or cameras separately. This experiment showed that the developed algorithm gives very good results (accuracy: 89.61%), and the navigation system itself performs required tasks of detecting and avoiding most of the obstacles on which it was tested.

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