• DocumentCode
    1168061
  • Title

    A vision system for intelligent mission profiles of micro air vehicles

  • Author

    Todorovic, Sinisa ; Nechyba, Michael C.

  • Author_Institution
    Dept. of Electr. & Comput. Eng., Univ. of Florida, Gainesville, FL, USA
  • Volume
    53
  • Issue
    6
  • fYear
    2004
  • Firstpage
    1713
  • Lastpage
    1725
  • Abstract
    Recently, much progress has been made toward the development of small-scale aircraft, known broadly as Micro Air Vehicles (MAVs). Until recently, these platforms were exclusively remotely piloted, with no autonomous or intelligent capabilities, due at least in part to stringent payload restrictions that limit onboard sensors. However, the one sensor that is critical to most conceivable MAV missions, such as remote surveillance, is an onboard video camera and transmitter that streams flight video to a nearby ground station. Exploitation of this key sensor is, therefore, desirable, since no additional onboard hardware (and weight) is required. As such, in this paper we develop a general and unified computer vision framework for MAVs that not only addresses basic flight stability and control, but enables more intelligent missions as well. This paper is organized as follows. We first develop a real-time feature extraction method called multiscale linear discriminant analysis (MLDA), which explicitly incorporates color into its feature representation, while implicitly encoding texture through a dynamic multiscale representation of image details. We demonstrate key advantages of MLDA over other possible multiscale approaches (e.g., wavelets), especially in dealing with transient video noise. Next, we show that MLDA provides a natural framework for performing real-time horizon detection. We report horizon-detection results for a range of images differing in lighting and scenery and quantify performance as a function of image noise. Furthermore, we show how horizon detection naturally leads to closed-loop flight stabilization. Then, we motivate the use of tree-structured belief networks (TSBNs) with MLDA features for sky/ground segmentation. This type of segmentation augments basic horizon detection and enables certain MAV missions where prior assumptions about the flight vehicle´s orientation are not possible. Again, we report segmentation results for a range of images and quantify robustness to image noise. Finally, we demonstrate the seamless extension of this framework, through the idea of visual contexts, for the detection of artificial objects and/or structures and illustrate several examples of such additional segmentation. This extension thus enables mission- profiles that require, for example, following a specific road or the tracking of moving ground objects. Throughout, our approach and algorithms are heavily influenced by real-time constraints and robustness to transient video noise.
  • Keywords
    aerospace robotics; aircraft control; belief networks; computer vision; feature extraction; image representation; image segmentation; image texture; intelligent robots; microrobots; object detection; object recognition; remotely operated vehicles; stability; video cameras; video signal processing; computer vision framework; feature extraction method; horizon detection; image noise; image segmentation; intelligent mission profiles; microair vehicles; multiscale image representation; multiscale linear discriminant analysis; object detection; object recognition; real-time control; sky-ground segmentation; small-scale aircraft; three-structured belief networks; video camera; vision system; vision-based control; Aircraft; Image segmentation; Intelligent sensors; Intelligent systems; Intelligent vehicles; Machine vision; Noise robustness; Payloads; Remotely operated vehicles; Surveillance; 65; Image segmentation; object recognition; real-time control; vision-based control;
  • fLanguage
    English
  • Journal_Title
    Vehicular Technology, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0018-9545
  • Type

    jour

  • DOI
    10.1109/TVT.2004.834880
  • Filename
    1360130