Decision Tree approach to Identify Vision Disorder for lazy Eye

P. K. Pant, Devendra Singh, Himanshu Pant, Ayush Kapri
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Abstract

Lazy Eye is a disorder of vision and is related to a neurological disorder, in which the brain is not able to receive correct input from one eye. This disease called Amblyopia. Two to five percent people are affected by this disorder. Cibis, Wang, and Van Eenwyk have developed an automatic system for sight screening, aimed for early finding the problem while the person is a child. These systems not able to achieve an accuracy of more than 78%. From AVVDA system two more features are used but achieved a low accuracy. We are using traditional machine learning technique, decision tree approach, to get more accuracy. We have used random forest WEKA architecture for the patient vision data set and for selecting the appropriate features we have used InfoGain Class. With the decision tree approach, our work showed good results, where the accuracy achieved is more than 90%.
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判定弱视视力障碍的决策树方法
弱视是一种视力障碍,与一种神经系统疾病有关,即大脑无法从一只眼睛接收正确的输入。这种病叫做弱视。2%到5%的人患有这种疾病。Cibis, Wang和Van Eenwyk已经开发了一种自动视力筛查系统,旨在在人还是孩子的时候早期发现问题。这些系统不能达到超过78%的精度。AVVDA系统使用了另外两个特征,但精度较低。我们正在使用传统的机器学习技术,决策树方法,以获得更高的准确性。对于患者视觉数据集,我们使用了随机森林WEKA架构,为了选择合适的特征,我们使用了InfoGain Class。使用决策树方法,我们的工作取得了良好的效果,准确率达到90%以上。
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