基于群稀疏表示的屈光误差检测

Qin Li, Jinghua Wang, J. You, Bob Zhang, F. Karray
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引用次数: 3

摘要

如今,全世界有大量的人患有由眼科屈光不正引起的散光、近视和远视等眼病。本文提出了一种计算机辅助诊断此类眼科屈光不正眼病的有效方法。该系统包括两个主要步骤:(1)图像分割和几何特征提取;(2)基于群稀疏表示的分类。虽然图像分割看起来相对简单和直接,但对于数字化过程中由于失真导致的图像质量不佳,如何实现高精度的图像分割是一项具有挑战性的任务。为了避免信息不完全导致的误分类,提出了基于组稀疏表示的低维数据分类方案。实验结果表明,该分类方法是可行的,具有较好的应用前景。
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Refractive error detection via group sparse representation
Nowadays large populations worldwide are suffering from eye diseases such as astigmatism, myopia, and hyperopia which are caused by ophthalmologically refractive errors. This paper presents an effective approach to computer aided diagnosis of such eye diseases due to ophthalmologically refractive errors. The proposed system consists of two major steps: (1) image segmentation and geometrical feature extraction; (2) group sparse representation based classification. Although image segmentation seems relatively easy and straight forward, it is a challenge task to achieve high accuracy of segmentation for images at poor quality caused by distortion during image digitization. To avoid misclassifications by incomplete information, we propose group sparse representation-based classification scheme to classify low-dimensional data which are partially corrupted. The experimental results demonstrate the feasibility of the new classification scheme with good performance for potential medical applications.
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