青光眼分类的纹理分析

Suraya Mohammad, D. T. Morris
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引用次数: 13

摘要

在本文中,我们介绍了我们正在进行的青光眼分类使用眼底图像。该方法利用了基于二元鲁棒独立初等特征(BRIEF)的纹理分析。选择这种纹理测量方法是因为它可以解决视网膜图像的照明问题,并且与目前文献中使用的大多数现有纹理测量方法相比,它具有较低的计算复杂度。与其他方法相反,纹理度量是从整个视网膜图像中提取的,而不针对任何特定区域。该方法在196幅图像上进行了测试,其中110幅健康视网膜图像和86幅青光眼图像,曲线下面积(AUC)达到84%。通过与其他纹理测量方法的性能比较,证明了该方法的优越性。
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Texture analysis for glaucoma classification
In this paper, we present our ongoing work on glaucoma classification using fundus images. The approach makes use of texture analysis based on Binary Robust Independent Elementary Features (BRIEF). This texture measurement is chosen because it can address the illumination issues of the retinal images and has a lower degree of computational complexity than most of the existing texture measurement methods currently used in the literature. Contrary to other approaches, the texture measures are extracted from the whole retina image without targeting any specific region. The method was tested on a set of 196 images composed of 110 healthy retina images and 86 glaucomatous images and achieved an area under curve (AUC) of 84%. A comparison performance with other texture measurements is also included, which shows our method to be superior.
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