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A Novel Deep Learning Method for Red Lesions Detection Using Hybrid Feature

机译:一种基于混合特征的红色病灶深度学习新方法

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Red lesions detection is the key to controlling disease progression in Diabetic Retinopathy (DR) early stages. In this paper we propose a novel method for red lesions detection based on hybrid features, which consist of deep learned features extracted via an improved LeNet architecture and hand-crafted features. A class balanced cross-entropy loss in full connected layer of the modified LeNet network is used to reduce the interference from the unbalanced data types on learning features. Blood vessels segmentation based on the U-net Convolutional Network is applied to deal with the lesion candidates overlapping with vessels in the process of hand-crafted features extraction. Such ensemble vector of descriptors is used afterwards to identify true lesion candidates using a Random Forest classifier. The approach was evaluated based on the public dataset-DIARETDB1.
机译:红色病变检测是控制糖尿病性视网膜病变(DR)早期疾病进展的关键。在本文中,我们提出了一种基于混合特征的红色病变检测的新方法,该方法包括通过改进的LeNet架构和手工制作的特征提取的深度学习特征。改进的LeNet网络的全连接层中的类平衡交叉熵损失用于减少不平衡数据类型对学习功能的干扰。应用基于U-net卷积网络的血管分割技术,在手工特征提取过程中,对与血管重叠的病变部位进行处理。随后使用描述符的这种集成向量,使用随机森林分类器来识别真正的病变候选者。该方法是基于公共数据集DIARETDB1进行评估的。

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