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A Novel Grading Method of Cataract Based on AWM

机译:一种基于AWM的白内障评分新方法

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Cataract is one of the most common causes of visual blindness, about 90% of the elderly over 60 years old with visual impairment in China have cataract diseases, and about 90% of eye diseases are diagnosed by observing the fundus. The observation of fundus has always been a necessary mean of diagnosing a cataract. Moreover, it is highly uncertain about judging the degree of lesions based on experience, but also the efficiency of this method is very low. Therefore, employing a computer-aided diagnostic system to perform the automatic grading of cataract is of great research value of practical use. Most of the studies reported in the literature utilize histogram equalization (Histeq) or other image enhancement methods based on gray value changes to improve the contrast. In this paper, the adaptive window model (AWM) is used to enhance the contrast between the vessel and the background. We used features extracted from the spoke features of the image for cataract grading. The best average accuracy achieved by Support Vector Machine(Back Propagation Neural Network) is 80.12% (78.26%) when AWM is used to enhance the contrast. Furthermore, it is even higher than 73.29% (75.16%) when the Histeq is used as an image enhancement technique.
机译:白内障是导致视觉失明的最常见原因之一,在中国,约90%的60岁以上视力障碍的老年人患有白内障疾病,约90%的眼部疾病是通过观察眼底而诊断出来的。观察眼底一直是诊断白内障的必要手段。而且,根据经验判断病变的程度是高度不确定的,但是这种方法的效率很低。因此,采用计算机辅助诊断系统对白内障进行自动分级具有很大的实际应用研究价值。文献中报道的大多数研究都利用直方图均衡(Histeq)或其他基于灰度值变化的图像增强方法来改善对比度。在本文中,自适应窗口模型(AWM)用于增强血管和背景之间的对比度。我们使用从图像的轮辐特征中提取的特征进行白内障分级。当使用AWM增强对比度时,支持向量机(反向传播神经网络)获得的最佳平均准确度为80.12%(78.26%)。此外,当将Histeq用作图像增强技术时,它甚至高于73.29%(75.16%)。

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