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An Improved Retinal Blood Vessel Detection System Using an Extreme Learning Machine

机译:使用极端学习机改进的视网膜血管检测系统

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摘要

Retinal images are commonly used to diagnose various diseases, such as diabetic retinopathy, glaucoma, and hypertension. An important step in the analysis of such images is the detection of blood vessels, which is usually done manually and is time consuming. The main proposal in this work is a fast method for retinal blood vessel detection using Extreme Learning Machine (ELM). ELM requires only one iteration to complete its training and it is a robust and fast network in all aspects. The proposal is a compact and efficient representation of retinal images in which the authors achieved a reduction up to 39% of the initial data volume, while still keeping representativeness. To achieve such a reduction whilst maintaining the representativeness, three features (local tophat, local average, and local variance) were used. According to the simulations carried out, this proposal achieved an accuracy of about 95% for most results, outperforming most of the state-of-art methods. Furthermore, this proposal has greater sensitivity, meaning that more vessel pixels are detected correctly.
机译:视网膜图像通常用于诊断各种疾病,例如糖尿病视网膜病变,青光眼和高血压。这种图像分析的一个重要步骤是检测血管,其通常是手动完成并且是耗时的。本作工作中的主要提议是使用极端学习机(ELM)的视网膜血管检测的快速方法。 ELM只需要一次迭代来完成其培训,并且在各方面都是一个强大而快速的网络。该提案是视网膜图像的紧凑且有效的代表性,其中作者达到了初始数据量的减少,同时仍然保持代表性。为了实现这样的减少,同时使用所谓的代表性,使用三个特征(本地TOPHAT,局部平均值和局部方差)。根据进行的模拟,该提案对于大多数结果而言,实现了约95%的准确度,优于大多数最先进的方法。此外,该提议具有更大的灵敏度,这意味着正确地检测到更多的血管像素。

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