• DocumentCode
    51641
  • Title

    Classification of Bacterial Contamination Using Image Processing and Distributed Computing

  • Author

    Ahmed, W.M. ; Bayraktar, B. ; Bhunia, A.K. ; Hirleman, E.D. ; Robinson, J. Paul ; Rajwa, Bartlomiej

  • Author_Institution
    Visible Measures Corp., Boston, MA, USA
  • Volume
    17
  • Issue
    1
  • fYear
    2013
  • fDate
    Jan. 2013
  • Firstpage
    232
  • Lastpage
    239
  • Abstract
    Disease outbreaks due to contaminated food are a major concern not only for the food-processing industry but also for the public at large. Techniques for automated detection and classification of microorganisms can be a great help in preventing outbreaks and maintaining the safety of the nation´s food supply. Identification and classification of foodborne pathogens using colony scatter patterns is a promising new label-free technique that utilizes image-analysis and machine-learning tools. However, the feature-extraction tools employed for this approach are computationally complex, and choosing the right combination of scatter-related features requires extensive testing with different feature combinations. In this study, we used computer clusters to speed up the feature-extraction process, which enables us to analyze the contribution of different scatter-based features to the overall classification accuracy. A set of 1000 scatter patterns representing ten different bacterial strains was used. Zernike and Chebyshev moments as well as Haralick texture features were computed from the available light-scatter patterns. The most promising features were first selected using Fisher´s discriminant analysis, and subsequently a support-vector-machine classifier with a linear kernel was used. With extensive testing, we were able to identify a small subset of features that produced the desired results in terms of classification accuracy and execution speed. The use of distributed computing for scatter-pattern analysis, feature extraction, and selection provides a feasible mechanism for large-scale deployment of a light scatter-based approach to bacterial classification.
  • Keywords
    bio-optics; diseases; distributed processing; feature extraction; food processing industry; food safety; image classification; image texture; learning (artificial intelligence); light scattering; medical image processing; method of moments; microorganisms; pattern clustering; support vector machines; Fisher´s discriminant analysis; Haralick texture feature; Zernike and Chebyshev moments; automated detection; bacterial contamination classification; bacterial strain; colony scatter pattern; computer cluster; contaminated food; disease outbreak; distributed computing; execution speed; feature combination; feature-extraction tool; food-processing industry; foodborne pathogen classification; foodborne pathogen identification; image processing; image-analysis; label-free technique; light-scatter pattern; linear kernel; machine-learning tool; microorganism classification; nation food supply safety; overall classification accuracy; scatter-pattern analysis; scatter-related feature; support-vector-machine classifier; Accuracy; Chebyshev approximation; Distributed computing; Feature extraction; Lasers; Microorganisms; Polynomials; Bacterial contamination; classification; distributed computing; feature extraction; Bacteria; Bacterial Typing Techniques; Discriminant Analysis; Food Microbiology; Image Processing, Computer-Assisted; Models, Biological; Pattern Recognition, Automated; Scattering, Radiation; Support Vector Machines; Vibrio;
  • fLanguage
    English
  • Journal_Title
    Biomedical and Health Informatics, IEEE Journal of
  • Publisher
    ieee
  • ISSN
    2168-2194
  • Type

    jour

  • DOI
    10.1109/TITB.2012.2222654
  • Filename
    6323033