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Automatic optic disc detection using low-rank representation based semi-supervised extreme learning machine

机译:使用基于低秩表示的半监督极限学习机进行自动光盘检测

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摘要

Optic disc detection plays an important role in developing automatic screening systems for diabetic retinopathy. Several supervised learning-based approaches have been proposed for optic disc detection. However, these approaches demand that the input training examples are completely labelled. Essentially, in medical image analysis, it is difficult to prepare several training samples which were given reliable class labels due to the fact that manually labelling data is very expensive. Moreover, retinal images such as complex vessels structures in the optic disc constituting nonlinear relationships in high-dimensional observation space, which cannot work well by traditional linear classifiers. In this study, a novel approach named low-rank representation based semi-supervised extreme learning machine (LRR-SSELM) is proposed for automated optic disc detection. Our model has the following advantages. First, it detects the optic disc from the viewpoint of semi-supervised learning and overcomes the problem there are small portion of labelled samples. Second, a nonlinear classifier is introduced into our model to fully explore the nonlinear data. Third, the local and global structures of original data can be greatly persevered by low-rank representation (LRR). The performance of the proposed method is validated on three publicly available databases, DIARETDB0, DIARETDB1 and Messidor. The experimental results indicate the advantages and effectiveness of the proposed approach.
机译:光盘检测在开发糖尿病性视网膜病变自动筛查系统中起着重要作用。已经提出了几种基于监督学习的方法来检测光盘。但是,这些方法要求对输入的训练示例进行完全标记。基本上,在医学图像分析中,由于手动标记数据非常昂贵的事实,很难准备几个训练样本,这些训练样本被赋予可靠的类别标签。此外,诸如视盘中的复杂血管结构之类的视网膜图像构成了高维观察空间中的非线性关系,而传统的线性分类器无法很好地工作。在这项研究中,提出了一种新的方法,称为基于低秩表示的半监督极限学习机(LRR-SSELM),用于自动光盘检测。我们的模型具有以下优点。首先,它从半监督学习的角度检测视盘,并克服了标记样本很少的问题。其次,将非线性分类器引入我们的模型中以充分探索非线性数据。第三,原始数据的本地和全局结构可以通过低秩表示(LRR)得到极大的坚持。在三个公开可用的数据库DIARETDB0,DIARETDB1和Messidor上验证了该方法的性能。实验结果表明了该方法的优点和有效性。

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