论文标题
基于残留的基于型糖尿病性视网膜病变的摄像机改编
Residual-CycleGAN based Camera Adaptation for Robust Diabetic Retinopathy Screening
论文作者
论文摘要
有广泛的研究重点是从眼底图像中自动化的糖尿病性重新疾病(DR)检测。但是,将这些模型应用于现实世界的DR筛选中时的准确性下降是可以访问的,其中Fun-Dus相机品牌与用于捕获训练IMAGE的摄像机品牌不同。我们如何才能在仅从一个相机品牌的标签底面图像上训练分类模型,但仍能在其他品牌相机获得的IM-AGE上取得良好的性能?在本文中,我们从实验的角度定量验证了眼底相机品牌相关域转移对DR分类模型性能的影响。此外,我们促成面向摄像头的残留循环,以通过域的适应来减轻相机品牌的差异,并在目标摄像机图像上提高分类性能。 Eyepacs Da-Taset和私人数据集的广泛消融实验表明,相机品牌差异可以显着影响分类性能,并证明我们提出的Meth-OD可以有效地改善目标域的模型性能。我们已经推断并标记了Eyepacs Da-Taset中每个图像的相机品牌,并将宣传相机品牌标签以进一步研究域适应。
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.