Tracing of Strabismus Detection Using Hough Transform

Nur Syazlin Zolkifli, Ain Nazari
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引用次数: 3

Abstract

The Strabismus (squint) is one of the most common vision disorders in children. It can bring a discomfort and serious negative impacts on daily life. A timely diagnosis is needed to prevent from getting worse. However, the traditional diagnosis screening is usually done manually and requires expertise, time, and high cost due to the sophisticated equipment. Thus, the proposed automated strabismus detection using computer aided diagnosis can help to reduce time for the ophthalmologist to diagnose the strabismus and the types. The proposed system consists of early stages for the detection of the strabismus: (1) pre-processing as the early stage to get better visualization by removing the unwanted noise and (2) the feature extraction of the iris position to get the information on types of strabismus. The eyes image from the Columbia Gaze Dataset (CAVE), Kaggle: Eye disease datasets and Siblings Database (SiblingsDB) will be used as the input image for the system. Hence, the proposed method in the early stages gives out the value of Mean Square Error (MSE) and Peak Signal-to-Noise Ratio (PSNR) of 0.0003 and 84.35% respectively for CAVE dataset slightly higher than Eye disease dataset and SiblingsDB. By utilizing the image processing approach, this system will be able to assists the ophthalmology and health care practitioners as strabismus screening tools.
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利用霍夫变换跟踪斜视检测
斜视是儿童最常见的视力障碍之一。它会给日常生活带来不适和严重的负面影响。需要及时诊断以防止病情恶化。然而,传统的诊断筛查通常是手工完成的,需要专业知识,时间和高成本,因为复杂的设备。因此,采用计算机辅助诊断的斜视自动检测有助于减少眼科医生诊断斜视和类型的时间。该系统包括斜视检测的早期阶段:(1)预处理作为早期阶段,通过去除不必要的噪声获得更好的可视化效果;(2)虹膜位置特征提取,获得斜视类型信息。来自哥伦比亚凝视数据集(CAVE)、Kaggle:眼病数据集和兄弟姐妹数据库(SiblingsDB)的眼睛图像将被用作系统的输入图像。因此,本文方法在前期得到的CAVE数据集的均方误差(MSE)和峰值信噪比(PSNR)分别为0.0003和84.35%,略高于眼病数据集和兄妹sdb。通过利用图像处理方法,该系统将能够作为斜视筛查工具协助眼科和保健从业人员。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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