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Artificial Intelligence Major
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Master
GAN-based Synthetic Ultrasound Image Generation: Addressing Data Scarcity and Domain Adaptation
Eunji Lee
Artificial Intelligence Major
Theses
Master
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Title
GAN-based Synthetic Ultrasound Image Generation: Addressing Data Scarcity and Domain Adaptation
Alternative Title
GAN 기반 합성 초음파 이미지 생성: 데이터 부족 및 도메인 적응 문제 해결
DGIST Authors
Eunji Lee
;
Jin Ho Chang
;
Jae Youn Hwang
Advisor
장진호
Co-Advisor(s)
Jae Youn Hwang
Issued Date
2025
Awarded Date
2025-02-01
Citation
Eunji Lee. (2025). GAN-based Synthetic Ultrasound Image Generation: Addressing Data Scarcity and Domain Adaptation. doi: 10.22677/THESIS.200000837546
Type
Thesis
Description
Deep Learning, Data Augmentation, Domain Adaptation, Ultrasound Image, CycleGAN
Table Of Contents
Ⅰ. Introduction 1
1.1 Background 1
1.2 Related Work 2
1.3 Research Objectives and Approach 7
II. Methods 10
2.1 Network 10
2.1.1 Model Overview 10
2.1.2 Framework 11
2.1.3 Formulation 12
2.2 Datasets 15
2.2.1 Open-Source Datasets 16
2.2.2 Field II Simulation 19
2.3 Training Setup and Details 21
2.3.1 Network Architecture 21
2.3.2 Loss Function 25
2.3.3 Training Setup 27
III. Results 29
3.1 CycleGAN Results 29
3.2 Evaluation 34
3.2.1 Evaluation Metrics 35
3.2.2 Evaluation Method 37
3.2.3 Training Setup 38
3.2.4 Evaluation Results 40
IV. Conclusion 48
4.1 Future Works 48
References 49
국문요약 53
URI
http://hdl.handle.net/20.500.11750/58104
http://dgist.dcollection.net/common/orgView/200000837546
DOI
10.22677/THESIS.200000837546
Degree
Master
Department
Artificial Intelligence Major
Publisher
DGIST
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