基于特征池的眼底图像疾病检测

Sammy Yap Xiang Bang, Kim-Ngoc Thi Le, D. Le, Hyunseung Choo
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引用次数: 0

摘要

没有及时诊断和治疗的视网膜眼底疾病可能导致严重的后果,如永久性视力障碍。近年来,许多机器学习(ML)和深度学习(DL)模型被引入眼底图像分类。然而,这些重型模型需要高端的图形处理单元进行训练和测试,因此不适合在计算能力有限的眼底相机中实际使用。在本文中,我们通过与其他深度学习模型的比较,证明了我们提出的两块模型的有效性,特征开发轻量级网络(FEL-net)由特征开发块(FEB)和轻量级分类块(LCB)组成。在21,697张眼底图像的数据集上进行了实验,该模型的二值分类准确率达到99%。利用所提出的鲁棒FEB生成眼底图像的精细化特征池,构建高效的ML分类器,以高精度和低运行时间区分眼底病变图像和正常图像。
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Feature Pool Exploitation for Disease Detection in Fundus Images
Retinal fundus diseases without immediate diagnoses and treatment may lead to serious consequences such as permanent visual impairment. Recently, many machine learning (ML) and deep learning (DL) models have been introduced for fundus image classification. However, those heavy models require high-end graphics processing units for training and testing, thus not suitable for real-case usage in fundus cameras with limited computation power. In this paper, we demonstrate the effectiveness of our proposed two-block model, Feature Exploitation Lightweight network (FEL-net) which consists of a Feature Exploitation Block (FEB) and Lightweight Classification Block (LCB) by comparing it with other DL models. The experiment was carried out on a dataset of 21, 697 fundus images and our model achieves 99% binary classification accuracy. The proposed robust FEB is used to generate a refined feature pool for fundus images to build an efficient ML classifier that can distinguish fundus images with disease from the normal case with high accuracy and low running time.
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