CVLGIVMay 28, 2020

Combining Fine- and Coarse-Grained Classifiers for Diabetic Retinopathy Detection

arXiv:2005.14308v11 citations
Originality Incremental advance
AI Analysis

This work addresses diabetic retinopathy detection for medical diagnosis, presenting an incremental improvement by integrating existing classifier types.

The authors tackled diabetic retinopathy detection by combining coarse-grained and fine-grained classifiers, resulting in an ensemble that largely outperforms individual classifiers and most published works across multiple classification tasks.

Visual artefacts of early diabetic retinopathy in retinal fundus images are usually small in size, inconspicuous, and scattered all over retina. Detecting diabetic retinopathy requires physicians to look at the whole image and fixate on some specific regions to locate potential biomarkers of the disease. Therefore, getting inspiration from ophthalmologist, we propose to combine coarse-grained classifiers that detect discriminating features from the whole images, with a recent breed of fine-grained classifiers that discover and pay particular attention to pathologically significant regions. To evaluate the performance of this proposed ensemble, we used publicly available EyePACS and Messidor datasets. Extensive experimentation for binary, ternary and quaternary classification shows that this ensemble largely outperforms individual image classifiers as well as most of the published works in most training setups for diabetic retinopathy detection. Furthermore, the performance of fine-grained classifiers is found notably superior than coarse-grained image classifiers encouraging the development of task-oriented fine-grained classifiers modelled after specialist ophthalmologists.

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