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논문 리스트

2020
Automatic Extraction of Liver Region from Medical Images by Using an MFUnet Automatic Extraction of Liver Region from Medical Images by Using an MFUnet
(사)한국스마트미디어학회
김수형, 양형정 외 3명
논문정보
Publisher
스마트미디어저널
Issue Date
2020-09-15
Keywords
-
Citation
-
Source
-
Journal Title
-
Volume
9
Number
3
Start Page
59
End Page
70
DOI
ISSN
22871322
Abstract
This paper presents a fully automatic tool to recognize the liver region from CT images based on a deep learning model, namely Multiple Filter U-net, MFUnet. The advantages of both U-net and Multiple Filters were utilized to construct an autoencoder model, called MFUnet for segmenting the liver region from computed tomograph. The MFUnet architecture includes the autoencoding model which is used for regenerating the liver region, the backbone model for extracting features which is trained on ImageNet, and the predicting model used for liver segmentation. The LiTS dataset and Chaos dataset were used for the evaluation of our research. This result shows that the integration of Multiple Filter to U-net improves the performance of liver segmentation and it opens up many research directions in medical imaging processing field.

저자 정보

이름 소속
김수형 인공지능학부
양형정 인공지능융합학과