利用Haralick纹理特征自动诊断青光眼

S. Simonthomas, N. Thulasi, P. Asharaf
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引用次数: 37

摘要

青光眼是全球第二大致盲原因。这是一种眼部液体压力持续增加,损害视神经并导致视力丧失的疾病。用于青光眼早期检测的计算决策支持系统可以帮助预防这种并发症。视网膜视神经纤维层可以使用光学相干断层扫描、扫描激光偏振法和海德堡视网膜断层扫描方法进行评估。本文提出了一种利用数字眼底图像的哈拉里克纹理特征检测青光眼的新方法。使用K个最近邻(KNN)分类器进行监督分类。结果表明,Haralick纹理特征分为数据库和分类两部分,在数据库中加载图像,并结合灰度共生矩阵(GLCM)和13个Haralick特征提取图像特征,其识别效果优于其他分类器,正确识别青光眼图像,准确率达到98%以上。还研究了培训和测试的影响,以提高结果。在MATLAB中开发了该算法的特征提取和分类软件。我们提出的新特征具有临床意义,可用于准确检测青光眼。
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Automated diagnosis of glaucoma using Haralick texture features
Glaucoma is the second leading cause of blindness worldwide. It is a disease in which fluid pressure in the eye increases continuously, damaging the optic nerve and causing vision loss. Computational decision support systems for the early detection of glaucoma can help prevent this complication. The retinal optic nerve fibre layer can be assessed using optical coherence tomography, scanning laser polarimetry, and Heidelberg retina tomography scanning methods. In this paper, we present a novel method for glaucoma detection using an Haralick Texture Features from digital fundus images. K Nearest Neighbors (KNN) classifiers are used to perform supervised classification. Our results demonstrate that the Haralick Texture Features has Database and classification parts, in Database the image has been loaded and Gray Level Co-occurrence Matrix (GLCM) and thirteen haralick features are combined to extract the image features, performs better than the other classifiers and correctly identifies the glaucoma images with an accuracy of more than 98%. The impact of training and testing is also studied to improve results. The software for this algorithm has been developed in MATLAB for Feature extraction and classification. Our proposed novel features are clinically significant and can be used to detect glaucoma accurately.
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