• DocumentCode
    3360147
  • Title

    Processing string fusion for automated sea mine classification in shallow water

  • Author

    Aridgides, Tom ; Fernandez, M. ; Dobeck, Gerald

  • Author_Institution
    Lockheed Martin, Naval Electron. & Survillance, Syracuse, NY, USA
  • Volume
    4
  • fYear
    2002
  • fDate
    29-31 Oct. 2002
  • Firstpage
    2168
  • Abstract
    A novel sea mine computer-aided-detection / computer-aided-classification (CAD/CAC) processing string has been developed. The overall CAD/CAC processing string consists of pre-processing, adaptive clutter filtering (ACF), normalization, detection, feature extraction, feature orthogonalization, optimal subset feature selection, classification and fusion processing blocks. The range-dimension ACF is matched both to average highlight and shadow information, while also adaptively suppressing background clutter. For each detected object, features are extracted and processed through an orthogonalization transformation, enabling an efficient application of the optimal log-likelihood-ratio-test (LLRT) classification rule, in the orthogonal feature space domain. The classified objects of 3 distinct processing strings are fused using the classification confidence values as features and logic-based, "M-out-of-N", or LLRT-based fusion rules. The utility of the overall processing strings and their fusion was demonstrated with shallow water high-resolution sonar imagery data. The processing string detection and classification parameters were tuned and the string classification performance was optimized, by appropriately selecting a subset of the original feature set. A significant improvement was made to the CAD/CAC processing string by utilizing a repeated application of the subset feature selection / LLRT classification blocks. It was shown that LLRT-based fusion algorithms outperform the logic based or the "M-out-of-N" ones. The LLRT-based fusion of the CAD/CAC processing strings resulted in up to a eight-fold false alarm rate reduction, compared to the best single CAD/CAC processing string results, while maintaining a constant correct mine classification probability.
  • Keywords
    geophysics computing; mining; object detection; oceanographic techniques; seafloor phenomena; sonar detection; underwater sound; CAD/CAC fusion processing string; LLRT-based fusion algorithm; adaptive clutter filtering; automated sea mine classification; background clutter; classification block; computer-aided-detection/computer-aided-classification; correct mine classification probability; feature extraction; logic-based "M-out-of-N"; normalization block; object detection; optimal log-likelihood-ratio-test; optimal subset feature selection; orthogonal feature space domain; orthogonalization transformation; pre-processing; range-dimension ACF; shadow information; shallow water high-resolution sonar imagery; Adaptive filters; Cascading style sheets; Computer vision; Feature extraction; Filtering; Robustness; Sea measurements; Sea surface; Sonar detection; Surveillance;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    OCEANS '02 MTS/IEEE
  • Print_ISBN
    0-7803-7534-3
  • Type

    conf

  • DOI
    10.1109/OCEANS.2002.1191966
  • Filename
    1191966