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Proceedings Paper

Fractal dimension based corneal fungal infection diagnosis
Author(s): Madhusudhanan Balasubramanian; A. Louise Perkins; Roger W. Beuerman; S. Sitharama Iyengar
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Paper Abstract

We present a fractal measure based pattern classification algorithm for automatic feature extraction and identification of fungus associated with an infection of the cornea of the eye. A white-light confocal microscope image of suspected fungus exhibited locally linear and branching structures. The pixel intensity variation across the width of a fungal element was gaussian. Linear features were extracted using a set of 2D directional matched gaussian-filters. Portions of fungus profiles that were not in the same focal plane appeared relatively blurred. We use gaussian filters of standard deviation slightly larger than the width of a fungus to reduce discontinuities. Cell nuclei of cornea and nerves also exhibited locally linear structure. Cell nuclei were excluded by their relatively shorter lengths. Nerves in the cornea exhibited less branching compared with the fungus. Fractal dimensions of the locally linear features were computed using a box-counting method. A set of corneal images with fungal infection was used to generate class-conditional fractal measure distributions of fungus and nerves. The a priori class-conditional densities were built using an adaptive-mixtures method to reflect the true nature of the feature distributions and improve the classification accuracy. A maximum-likelihood classifier was used to classify the linear features extracted from test corneal images as 'normal' or 'with fungal infiltrates', using the a priori fractal measure distributions. We demonstrate the algorithm on the corneal images with culture-positive fungal infiltrates. The algorithm is fully automatic and will help diagnose fungal keratitis by generating a diagnostic mask of locations of the fungal infiltrates.

Paper Details

Date Published: 24 August 2006
PDF: 10 pages
Proc. SPIE 6312, Applications of Digital Image Processing XXIX, 631214 (24 August 2006); doi: 10.1117/12.680041
Show Author Affiliations
Madhusudhanan Balasubramanian, LSU (United States)
A. Louise Perkins, USM (United States)
Roger W. Beuerman, Univ. of Singapore (Singapore)
Nanyang Technical Univ. (Singapore)
LSU, Health Sciences Ctr. (United States)
S. Sitharama Iyengar, LSU (United States)


Published in SPIE Proceedings Vol. 6312:
Applications of Digital Image Processing XXIX
Andrew G. Tescher, Editor(s)

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