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http://dx.doi.org/10.3745/KTSDE.2019.8.6.251

A Study on the Comparison of Learning Performance in Capsule Endoscopy by Generating of PSR-Weigted Image  

Lim, Changnam (아주대학교 전자공학과)
Park, Ye-Seul (아주대학교 전자공학과)
Lee, Jung-Won (아주대학교 전자공학과)
Publication Information
KIPS Transactions on Software and Data Engineering / v.8, no.6, 2019 , pp. 251-256 More about this Journal
Abstract
A capsule endoscopy is a medical device that can capture an entire digestive organ from the esophagus to the anus at one time. It produces a vast amount of images consisted of about 8~12 hours in length and more than 50,000 frames on a single examination. However, since the analysis of endoscopic images is performed manually by a medical imaging specialist, the automation requirements of the analysis are increasing to assist diagnosis of the disease in the image. Among them, this study focused on automatic detection of polyp images. A polyp is a protruding lesion that can be found in the gastrointestinal tract. In this paper, we propose a weighted-image generation method to enhance the polyp image learning by multi-scale analysis. It is a way to extract the suspicious region of the polyp through the multi-scale analysis and combine it with the original image to generate a weighted image, that can enhance the polyp image learning. We experimented with SVM and RF which is one of the machine learning methods for 452 pieces of collected data. The F1-score of detecting the polyp with only original images was 89.3%, but when combined with the weighted images generated by the proposed method, the F1-score was improved to about 93.1%.
Keywords
Machine Learning; Diagnostic Assistant; Medical Lmages; Capsule Endoscopy;
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