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Investigation of Machine Vision and Path Planning Methods for use in an Autonomous Unmanned Air Vehicle

    Student thesis: Doctor of Philosophy

    Abstract

    The thesis investigates obstacle detection and path planning methods appropriate
    for use in an unmanned helicopter, which are essential to establishing autonomous
    control of the vehicle.
    The research described here is complementary to a feasibility study by EA Technology
    Ltd to consider the use of robotic vehicles in the inspection of overhead
    electricity power lines. The context of this project is the proposal that the inspection
    be performed by a small, remotely-piloted helicopter fitted with a video
    camera, returning video imagery to the ground-based observer.
    A major obstacle to this concept is that, under current flight regulations, the
    helicopter would not be allowed to fly outside the visual range of the ground
    station. This work investigates whether autonomous obstacle detection based on
    machine vision coupled with 3D path planning has the potential to remove t his
    constraint.
    The thesis first discusses the requirements and current methods of overhead line
    inspection. A review of relevant machine vision and path planning methods is
    given and a method for placing these into a hierarchical control system architecture
    is described. A method for fast 3D path planning, based on the distance
    transform, is introduced and experimental results are presented to show its effectiveness.
    Implementation of the control system, integrating the vision system
    and path planner, is done by means of a scale model laboratory test rig. The
    construction of this test rig is described and results are presented to show obstacle
    avoidance in action. The thesis ends with an assessment of how far the research
    has advanced the prospect of autonomous aerial power line inspection.
    Date of AwardDec 2000
    Original languageEnglish
    Awarding Institution
    • Bangor University
    SupervisorDewi Jones (Supervisor)

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