This thesis presents a complete vision-based navigation system that can plan and
follow an obstacle-avoiding path to a desired destination on the basis of an internal map
updated with information gathered from its visual sensor.
For vision-based self-localization, the system uses new floor-edges-specific filters
for detecting floor edges and their pose, a new algorithm for determining the orientation of
the robot, and a new procedure for selecting the initial positions in the self-localization
procedure. Self-localization is based on matching visually detected features with those
stored in a prior map.
For planning, the system demonstrates for the first time a real-world application of
the neural-resistive grid method to robot navigation. The neural-resistive grid is modified
with a new connectivity scheme that allows the representation of the collision-free space of
a robot with finite dimensions via divergent connections between the spatial memory layer
and the neuro-resistive grid layer.
A new control system is proposed. It uses a Smith Predictor architecture that has
been modified for navigation applications and for intermittent delayed feedback typical of
artificial vision. A receding horizon control strategy is implemented using Normalised
Radial Basis Function nets as path encoders, to ensure continuous motion during the delay
between measurements.
The system is tested in a simplified environment where an obstacle placed
anywhere is detected visually and is integrated in the path planning process.
The results show the validity of the control concept and the crucial importance of a
robust vision-based self-localization process.
Date of Award | 2003 |
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Original language | English |
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Awarding Institution | |
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INTELLIGENT VISION-BASED NAVIGATION SYSTEM
KOAY, K. L. (Author). 2003
Student thesis: PhD