Abstract:
Position estimation using wheel odometric systems tends to give rather poor performances for an outdoor fourwheel skid steered mobile robot. Therefore autonomous
control of these vehicles is extremely challenging in outdoor environments. This paper describes an outdoor localization system based on visual odometry for skid steered vehicle using forward faced camera and a downward faced camera. Optical
flow field data is statistically analyzed to correctly estimate the position of the robot. Kalman Filtering is used to fuse data from two cameras for optimum performance. Also real-time Instantaneous Center of Rotation (ICR) detection using optical flow field data is proposed to calculate the heading angle. Two consumer grade cameras were used and algorithm was tested using open source image processing libraries. The proposed
system yielded an acceptable positioning accuracy on short runs in typical outdoor terrains.