Authors
Raja S Alomari, Ron Allen, Bikash Sabata, Vipin Chaudhary
Publication date
2009/3/3
Conference
Medical Imaging 2009: Computer-Aided Diagnosis
Volume
7260
Pages
349-358
Publisher
SPIE
Description
High resolution digital pathology images have a wide range of variability in color, shape, size, number, appearance, location, and texture. The segmentation problem is challenging in this environment. We introduce a hybrid method that combines parametric machine learning with heuristic methods for feature extraction as well as pre- and post-processing steps for localizing diverse tissues in slide images. The method uses features such as color, intensity, texture, and spatial distribution. We use principal component analysis for feature reduction and train a two layer back propagation neural network (with one hidden layer). We perform image labeling at pixel-level and achieve higher than 96% automatic localization accuracy on 294 test images.
Total citations
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Scholar articles
RS Alomari, R Allen, B Sabata, V Chaudhary - Medical Imaging 2009: Computer-Aided Diagnosis, 2009