基于可分离卷积层的双流网络标签平滑损失用于视网膜病变分级和分类

Mumtaz A. Kaloi, Asif Ali, Irfan Ali Babar, K. Mujeeb
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引用次数: 0

摘要

基于深度学习方法的视网膜病变检测是一个具有挑战性的问题,特别是糖尿病视网膜病变(DR)在医学图像处理中带来了许多技术难题。最近,标签平滑正则化被证明是提高深度学习模型性能的更好选择。因此,在本文中,我们引入了一种双流多任务学习模型以及一种新的加权标签平滑正则化损失(WLSRL)来检测视网膜病变。该模型采用可分离卷积神经网络和传统卷积神经网络相结合的双流网络来检测糖尿病视网膜病变。该模型旨在根据两种不同类型的数据对众多视网膜疾病进行分类。数据$\Delta_{1}$基于立体眼底照片,$\Delta_{2}$由基于oct的视网膜图像组成。模型分别在两个数据上进行训练和测试。我们在$\Delta_{1}$上执行两个分类任务TF1, TF2和TO1, TO2在$\Delta_{2}$上执行。任务TF1用于眼底照片的正常和异常分类,而任务TF2用于DR分级。同样,任务TO1将基于oct的图像分为四类,而任务TO2将图像分为正常和异常。实证结果表明,该模型使用WLSRL进行多任务学习,在视网膜病变分类和分级方面取得了较好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Label Smoothing Loss with Dual-Stream Network Using Separable Convolutional Layers for Retinopathy Grading and Classification
Retinopathy detection based on deep learning methods is a challenging problem, especially the diabetic retinopathy (DR) brings so many technical complications in medical image processing. Recently, label smoothing regularization has proved to be a better option to improve the performance of deep learning models. Therefore, in this paper, we introduce a dual-stream multi-task learning model along with a novel weighted label smoothing regularization loss (WLSRL) to detect retinopathy. The proposed model uses a dual-stream network by incorporating separable and conventional convolutional neural networks to detect diabetic retinopathy. The model is designed to classify numerous retinal diseases on two different types of data. The data $\Delta_{1}$ is based on stereoscopic fundus photographs and $\Delta_{2}$ consists of OCT-based retinal images. The model is trained and tested on both data separately. We perform two classification tasks TF1, TF2 on $\Delta_{1}$ and TO1, TO2 on $\Delta_{2}$. The task TF1 is for the classification of fundus photographs as normal and abnormal, whereas TF2 is for DR grading. Similarly, the task TO1 classifies OCT-based images into four classes, whereas the task TO2 classifies images as normal and abnormal. The empirical results show that the model achieves competitive results for retinopathy classification and grading using multitask learning with WLSRL.
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