컬러 자궁경부 영상에서 딥러닝 기법에서의 영상영역 처리 방법에 따른 성능 비교 연구Comparison on the Deep Learning Performance of a Field of View Variable Color Images of Uterine Cervix
- Other Titles
- Comparison on the Deep Learning Performance of a Field of View Variable Color Images of Uterine Cervix
- Authors
- 설유진; 김영재; 남계현; 김광기
- Issue Date
- 2020
- Publisher
- 한국멀티미디어학회
- Keywords
- Artificial Intelligence; Deep Learning; Image Processing; Cervix Cancer; Classification
- Citation
- 멀티미디어학회논문지, v.23, no.7, pp.812 - 818
- Journal Title
- 멀티미디어학회논문지
- Volume
- 23
- Number
- 7
- Start Page
- 812
- End Page
- 818
- URI
- https://scholarworks.bwise.kr/sch/handle/2021.sw.sch/19680
- ISSN
- 1229-7771
- Abstract
- Cervical cancer is the second most common female cancer in the world. In Korea, cervical cancer accounts for 13 percent of female cancers and 4,200 cases occur annually[1]. The purpose of this study is to use a deep learning model to identify the possibility of lesions in the cervix and to evaluate the efficient image preprocessing in order to diagnose diverse types of cervix in form. The study used 4,107 normal photographs of uterine cervix and 6,285 abnormal photographs of uterine cervix. Two types of image preprocessing were resized to square. The methods are cropping based on height and filling the space up and down with black images. In addition, all images were resampled to 256×256. The average accuracy of cropped cases is 94.15%. The average accuracy of the filled cases is 93.41%. According to the study, the model performance of cropped data was slightly better. But there were several images that were not accurately classified. Therefore, the additional experiment with pre-treatment process based on cropping is needed to cover images of the cervix in more detail.
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Collections - College of Medicine > Department of Obstetrics and Gynecology > 1. Journal Articles
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