基于霍夫变换的视网膜视盘自动定位

S. Sekhar, W. Al-Nuaimy, A. Nandi
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引用次数: 140

摘要

视网膜眼底照片广泛应用于糖尿病视网膜病变、青光眼等多种眼病的诊断和治疗。医学图像分析与处理在医学领域,特别是在无创治疗和临床研究中具有重要意义。通常眼底图像是由经过专门培训的临床医生手动分级的,这是一个耗时且资源密集的过程。计算机辅助眼底图像分析可以在专家检查之前提供视网膜特征的即时检测和表征。本文提出了一种自动定位视盘特征的新方法。该方法分为两步:第一步,首先通过形态学处理分离图像中最亮的区域,找到感兴趣的圆形区域;第二步,使用霍夫变换检测该感兴趣区域内正水平梯度图像中的主要圆形特征(对应于光盘)。在眼底图像数据库上的初步结果表明,与同类技术相比,该方法是有效和有利的。
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Automated localisation of retinal optic disk using Hough transform
The retinal fundus photograph is widely used in the diagnosis and treatment of various eye diseases such as diabetic retinopathy and glaucoma. Medical image analysis and processing has great significance in the field of medicine, especially in non-invasive treatment and clinical study. Normally fundus images are manually graded by specially trained clinicians in a time-consuming and resource-intensive process. A computer-aided fundus image analysis could provide an immediate detection and characterisation of retinal features prior to specialist inspection. This paper describes a novel method to automatically localise one such feature: the optic disk. The proposed method consists of two steps: in the first step, a circular region of interest is found by first isolating the brightest area in the image by means of morphological processing, and in the second step, the Hough transform is used to detect the main circular feature (corresponding to the optical disk) within the positive horizontal gradient image within this region of interest. Initial results on a database of fundus images show that the proposed method is effective and favourable in relation to comparable techniques.
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