StoolNet for Color Classification of Stool Medical Images
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초록

The color classification of stool medical images is commonly used to diagnose digestive system diseases, so it is important in clinical examination. In order to reduce laboratorians' heavy burden, advanced digital image processing technologies and deep learning methods are employed for the automatic color classification of stool images in this paper. The region of interest (ROI) is segmented automatically and then classified with a shallow convolutional neural network (CNN) dubbed StoolNet. Thanks to its shallow structure and accurate segmentation, StoolNet can converge quickly. The sufficient experiments confirm the good performance of StoolNet and the impact of the different training sample numbers on StoolNet. The proposed method has several advantages, such as low cost, accurate automatic segmentation, and color classification. Therefore, it can be widely used in artificial intelligence (AI) healthcare.

키워드

StoolNetconvolutional neural networkcolor classificationstool medical imageENHANCEMENT
제목
StoolNet for Color Classification of Stool Medical Images
저자
Yang, ZiyuanLeng, LuKim, Byung-Gyu
DOI
10.3390/electronics8121464
발행일
2019-12
유형
Article
저널명
ELECTRONICS
8
12