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Automated glaucoma detection system based on wavelet energy features and ANN

机译:基于小波能量特征和人工神经网络的青光眼自动检测系统

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Glaucoma is an eye disease which damages the optic nerve of the eye and becomes severe over time. It is caused due to buildup of pressure inside the eye. Glaucoma tends to be inherited and may not show up until later in life. The detection of glaucomatous progression is one of the most important and most challenging aspects of primary open angle glaucoma (OAG) management. The early detection of glaucoma is important in order to enable appropriate monitoring, treatment and to minimize the risk of irreversible visual field loss. Although advances in ocular imaging offer the potential for earlier diagnosis, the best method is to involve a combination of information from structural and functional tests. In this proposed method both structural and energy features are considered then analyzed to classify as glaucomatous image. Energy distribution over wavelet sub bands were applied to find these important texture energy features. Finally extracted energy features are applied to Multilayer Perceptron (MLP) and Back Propagation (BP) neural network for effective classification by considering normal subject's extracted energy features. Naive Bayes classifies the images in the database with the accuracy of 89.6%. MLP-BP Artificial Neural Network (ANN) algorithm classifies the images in the database with the accuracy of 97.6%.
机译:青光眼是一种眼部疾病,会损害眼睛的视神经并随着时间的推移而变得严重。这是由于眼睛内部压力积聚引起的。青光眼倾向于遗传,直到生命的后期才出现。青光眼进展的检测是原发性开角型青光眼(OAG)管理的最重要和最具挑战性的方面之一。为了能够进行适当的监测,治疗并使视野不可逆转的风险降至最低,早期检测青光眼很重要。尽管眼部成像技术的进步为早期诊断提供了潜力,但是最好的方法是将结构和功能测试的信息结合起来。在该提出的方法中,结构和能量特征均被考虑,然后进行分析以分类为青光眼图像。应用子波子带上的能量分布来发现这些重要的纹理能量特征。最后,通过考虑正常对象的提取能量特征,将提取的能量特征应用于多层感知器(MLP)和反向传播(BP)神经网络,以进行有效分类。朴素贝叶斯将数据库中的图像分类为89.6%的准确性。 MLP-BP人工神经网络(ANN)算法对数据库中的图像进行分类,准确性为97.6%。

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