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Residual-CycleGAN based Camera Adaptation for Robust Diabetic Retinopathy Screening

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arxiv 2007.15874 v1 pith:NXB2TY6D submitted 2020-07-31 eess.IV cs.CV

Residual-CycleGAN based Camera Adaptation for Robust Diabetic Retinopathy Screening

classification eess.IV cs.CV
keywords camerabrandperformanceclassificationdomainadaptationbrandsfundus
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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There are extensive researches focusing on automated diabetic reti-nopathy (DR) detection from fundus images. However, the accuracy drop is ob-served when applying these models in real-world DR screening, where the fun-dus camera brands are different from the ones used to capture the training im-ages. How can we train a classification model on labeled fundus images ac-quired from only one camera brand, yet still achieves good performance on im-ages taken by other brands of cameras? In this paper, we quantitatively verify the impact of fundus camera brands related domain shift on the performance of DR classification models, from an experimental perspective. Further, we pro-pose camera-oriented residual-CycleGAN to mitigate the camera brand differ-ence by domain adaptation and achieve increased classification performance on target camera images. Extensive ablation experiments on both the EyePACS da-taset and a private dataset show that the camera brand difference can signifi-cantly impact the classification performance and prove that our proposed meth-od can effectively improve the model performance on the target domain. We have inferred and labeled the camera brand for each image in the EyePACS da-taset and will publicize the camera brand labels for further research on domain adaptation.

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