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Classification of esophagitis grade by neural network and texture analysis Kwang-wook Seo
The Journal of Mechanical Science and Technology, vol. 22, no. 12, pp.2475-2480, 2008
Abstract : Esophagitis is divided into four grades according to the progress degree of disease by the LA classification method.
This research was carried out on image processing with endoscope images for quantifying the four grades under the LA
Classification. In a previous paper, which presented our work, the algorithm for detecting abnormal parts from one
image was developed. This paper was conducted to classify esophagitis grade of one image itself. Whole 30 images
were used in an experiment and included normal images and abnormal images with four grades. GLCM (gray level cooccurrence
matrices) factors were extracted. The distributions of the texture image histogram were analyzed from each
image for texture images. The algorithm to determine esophagitis grade used BPN (Back propagation network) that
was composed of the texture histogram distribution for input data. It learned 20 images and verified with 10 images to
diagnose under the LA classification system. Recognition ratio of learning result was 93.0% and verification result
77.0%. With features of the neural network, the success rate could be improved with this result by learning the data
which were errors. Consequently, the recognition success rate appeared at 96% by total re-learned 30 images in addition
to 10 images.
Keyword :
Back propagation network; Endoscopic image; Texture analysis
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