Detection of Glaucoma using ORB (Oriented FAST and Rotated BRIEF) Feature Extraction

Kazi Safayet Md. Shabbir, Md Imteaz Ahmed, Marzan Alam
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Abstract

This research was utilized to identify glaucoma, a type of eye illness. This endeavor necessitates the use of pictures from the fundus camera for image processing. This study reflects the effort done to detect glaucoma-affected eyes utilizing image feature extraction using Oriented FAST and Rotated BRIEF (ORB). ORB is a binary descriptor approach that is based on BRIEF and is highly fast. This technique is insensitive to picture noise and is invariant to any rotation. ORB is two orders of magnitude faster than SURF and performs similarly to SIFT. It is more efficient than other texture analysis methods. It is less computationally difficult than other approaches in the literature. This technique extracts features and detects texture by inspecting each pixel of the retina picture. It was trained on 160 fundus pictures of normal and glaucoma-affected retinas. After that, any healthy or glaucoma-affected eye may be easily recognized by obtaining an accurate eye picture. The results reveal that this technique has a precision and accuracy of more than 90%.
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利用ORB(定向FAST和旋转BRIEF)特征提取检测青光眼
这项研究是用来识别青光眼,一种眼病。这种努力需要使用眼底相机的图像进行图像处理。本研究反映了利用定向FAST和旋转BRIEF (ORB)图像特征提取来检测青光眼的努力。ORB是一种基于BRIEF的二进制描述符方法,速度非常快。该技术对图像噪声不敏感,对任何旋转都不影响。ORB比SURF快两个数量级,性能与SIFT相似。它比其他纹理分析方法更有效。与文献中的其他方法相比,它的计算难度更小。该技术通过检查视网膜图像的每个像素提取特征并检测纹理。对160张正常视网膜和青光眼视网膜的眼底图像进行训练。在此之后,任何健康或患有青光眼的眼睛都可以通过获得准确的眼睛图像来轻松识别。结果表明,该技术具有90%以上的精密度和准确度。
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