An Approach to Detecting Diabetic Retinopathy Based on Integrated Shallow Convolutional Neural Networks
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W. Chen, B. Yang, J. Li and J. Wang, "An Approach to Detecting Diabetic Retinopathy Based on Integrated Shallow Convolutional Neural Networks," in IEEE Access, vol. 8, pp. 178552-178562, 2020, doi: 10.1109/ACCESS.2020.3027794.
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Attribution 4.0 International (CC BY 4.0)
Attribution 4.0 International (CC BY 4.0)
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Abstract
The early detection of Diabetic Retinopathy (DR) is critical for diabetics to lower the blindness
risks. Many studies represent that Deep Convolutional Neural Network (CNN) based approaches are effective
to enable automatic DR detection through classifying retinal images of patients. Such approaches usually
depend on a very large dataset composed of retinal images with predefined classification labels to support
their CNN training. However, in some occasions, it is not so easy to get enough well-labelled images to act as
model training samples. At the same time, when a CNN becomes deeper, its training will not only take much
longer time, but also be more likely to lead to overfitting, especially on a large training dataset. Therefore,
it is meaningful to explore a simpler CNN based approach that is still effective on small datasets to classify
retinal images. In this paper, an approach to retinal image classification is proposed based on the integration
of multi-scale shallow CNNs. Experiments on public datasets show that, on small datasets, the proposed
approach can improve the classification accuracy by 3% compared with current representative integrated
CNN learning approaches. On the bigger dataset, the proposed approach can improve the classification
accuracy by 3% to 9% compared with other representative approaches such as traditional CNN, LCNN
and VGG16noFC. The evaluation also represents that, though the classification accuracy of the proposed
approach declines by 6% on the smallest dataset containing only 10% samples of the original dataset, its
time cost declines to about 30% of that on the original dataset.
