彩色视网膜图像青光眼分类的多向纹理特征提取

Ungsumalee Suttapakti, Supawadee Srikamdee, Janya Onpans
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引用次数: 1

摘要

青光眼是一种没有症状的眼部疾病。随着病情的发展,患者会永久失明。青光眼的自动分类对于从视网膜图像中识别早期青光眼诊断以降低视力丧失的风险至关重要。应用图像分析和机器学习技术,从视网膜图像中创建青光眼自动分类方法。为了提高青光眼分类的有效性,提出了一种多向纹理特征提取方法。该方法在分割后的无背景红、绿、蓝图像上提取纹理特征。其提取基于具有SURE熵的二维Gabor滤波器,有效地为青光眼分类提供合适的低维纹理特征。对于RIM-ONE R2数据库的455张图像,MTFE方法的正确率为90.44%,高于其他方法。提出的MTFE方法可以提取适当的纹理特征,从而提高视网膜图像青光眼分类的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-directional Texture Feature Extraction for Glaucoma Classification from Color Retinal Images
Glaucoma is a type of eye disease in which there are no symptoms. As the disease progresses for a long time, the patients lose their visions permanently. An automatic glaucoma classification is essential for identifying early glaucoma diagnosis from retinal images to reduce the vision loss risk. Image analysis and machine learning techniques are applied to create an automatic method for glaucoma classification from retinal images. To increase the effectiveness of glaucoma classification, a multi-directional texture feature extraction (MTFE) is proposed. This method extracts texture features on segmented red, green, and blue images without background. Its extraction is based on 2D Gabor filters with SURE entropy to efficiently provide appropriate texture features with low dimensions for classifying glaucoma. For 455 images of the RIM-ONE R2 database, the MTFE method yields 90.44%, which is higher than other methods. The MTFE proposed method can extract proper texture features, thus improving the accuracy of glaucoma classification from retinal images.
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