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Revisiting Masked Image Modeling with Standardized Color Space for Domain Generalized Fundus Photography Classification
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Title
Revisiting Masked Image Modeling with Standardized Color Space for Domain Generalized Fundus Photography Classification
DGIST Authors
Eojin JangSang Hyun ParkSunghoon Im
Advisor
박상현
Co-Advisor(s)
Sunghoon Im
Issued Date
2025
Awarded Date
2025-02-01
Citation
Eojin Jang. (2025). Revisiting Masked Image Modeling with Standardized Color Space for Domain Generalized Fundus Photography Classification. doi: 10.22677/THESIS.200000828469
Type
Thesis
Description
Masked image modeling, Domain generalization, Fundus photography, Diabetic retinopathy
Table Of Contents
I. INTRODUCTION 1
II. RELATED WORKS 4
2.1 CFP Classification 4
2.2 Foundation Models 4
2.3 Domain Generalization (DG) 4
III. METHOD 6
3.1 Problem Setup 6
3.2 Overview 6
3.3 Masked Image Transformation 6
3.3.1 Standardized color transformation 6
3.3.2 Masked image modeling 8
3.4 Joint Representation Learning 9
3.4.1 Cross-Attention module 9
3.4.2 Classification with joint representation 10
IV. EXPERIMENTS 11
4.1 Datasets 11
4.1.1 4DR 11
4.1.2 APTOS-Messidor 11
4.1.3 Glaucoma 11
4.2 Experimental Details 11
4.3 Experimental Scenarios 12
4.3.1 Comparison against recent DG methods 12
4.3.2 Scalability in diverse datasets 12
4.3.3 Ablation studies 12
4.3.4 Impact on masked image modeling 13
4.3.5 Impact on transformed image 13
4.3.6 Impact on cross-attention 13
V. RESULTS 14
5.1 Comparison Against Recent DG Methods 14
5.2 Scalability in Diverse Datasets 14
5.3 Ablation Studies 14
5.4 Impact on Masked Image Modeling 15
5.5 Impact on Transformed Image 16
5.6 Impact on Cross-Attention 17
5.7 Additional Results 17
5.7.1 Impact on the blended image Zi 17
5.7.2 Impact of class label use on color transformation 18
5.7.3 Additional transformed images 20
VI. CONCLUSION 23
References 24
URI
http://hdl.handle.net/20.500.11750/58105
http://dgist.dcollection.net/common/orgView/200000828469
DOI
10.22677/THESIS.200000828469
Degree
Master
Department
Artificial Intelligence Major
Publisher
DGIST
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