Robust Localization of Retinal Lesions via Weakly-supervised Learning

Ruohan Zhao, Qin Li, J. You
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Abstract

Retinal fundus images reveal the condition of retina, blood vessels and optic nerve, and is becoming widely adopted in clinical work because any subtle changes to the structures at the back of the eyes can affect the eyes and indicate the overall health. Recently, machine learning, in particular deep learning by convolutional neural network (CNN), has been increasingly adopted for computer-aided detection (CAD) of retinal lesions. However, a significant barrier to the high performance of CNN based CAD approach is the lack of sufficient labeled image samples for training. Unlike the fully-supervised learning which relies on pixel-level annotation of pathology in fundus images, this paper presents a new approach to discriminate the location of various lesions based on image-level labels via weakly learning. More specifically, our proposed method leverages the multilevel feature maps and classification score to cope with both bright and red lesions in fundus images. To enhance capability of learning less discriminative parts of objects (e.g. small blobs of microaneurysms opposed to bulk of exudates), the classifier is regularized by refining images with corresponding labels. The experimental results of the performance evaluation and benchmarking at both image-level and pixel-level on the public DIARETDB1 dataset demonstrate the feasibility and excellent potentials of our method in practical usage.
基于弱监督学习的视网膜病变鲁棒定位
视网膜眼底图像显示视网膜、血管和视神经的状况,由于眼后结构的任何细微变化都会影响眼睛并表明整体健康状况,因此在临床工作中被广泛采用。近年来,机器学习,特别是卷积神经网络(CNN)的深度学习,越来越多地被用于视网膜病变的计算机辅助检测(CAD)。然而,基于CNN的CAD方法的高性能的一个重要障碍是缺乏足够的标记图像样本用于训练。与全监督学习依赖于眼底图像病理的像素级标注不同,本文提出了一种基于图像级标记的弱学习方法来区分各种病灶的位置。更具体地说,我们提出的方法利用多层特征图和分类评分来处理眼底图像中的亮病灶和红色病灶。为了增强学习对象中鉴别性较差部分的能力(例如,相对于大量渗出物而言,小块的微动脉瘤),分类器通过使用相应的标签对图像进行细化来进行正则化。在DIARETDB1公共数据集上的图像级和像素级性能评估和基准测试的实验结果证明了我们的方法在实际应用中的可行性和良好的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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