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Performance Analysis of Support Vector Machine (SVM) for Optimization of Fuzzy Based Epilepsy Risk Level Classifications from EEG Signal Parameters

机译:eeg信号参数的基于模糊基于癫痫风险级别分类的基于模糊的基于癫痫风险级别分类的性能分析

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In this paper, we investigate the optimization of fuz/y outputs in the classification of epilepsy risli levels from EEG (Electroencephalogram) signals. The fuzzy techniques are applied as a first level classifier to classify the risk levels of epilepsy based on extracted parameters which include parameters like energy, variance, peaks, sharp spike waves, duration, events and covariance from the EEG signals of the patient. Support Vector Machine (SVM) may be identified as a post classifier on the classified data to obtain the optimized risk level that characterizes the patient's epilepsy risk level. Epileptic seizures result from a sudden electrical disturbance to the brain. Approximately one in every 100 persons will experience a seizure at some time in their life. Some times seizures may go Unnoticed, depending on their presentation which may be confused with other events, such as a stroke, which can also cause falls or migraines. Unfortunately, the occurrence of an epileptic seizure seems unpredictable and its process is very little understood The Performance Index (PI) and Quality Value (QV) are calculated for the above methods. A group of twenty patients with known epilepsy findings are used in this study. High PI such as 98.5% was obtained at QV's of 22.94, for SVM optimization when compared to the value of 40% and 6.25 through fuzzy techniques respectively. We find that the SVM Method out performs Fuzzy Techniques in optimizing the epilepsy risk levels. In India number of persons are suffering from Epilepsy are increasing every year. The complexity Involved in the diagnosis and therapy is to be cost effective in nature. This paper is intended to synthesis a cost effective SVM mechanism to classify the epilepsy risk level of patients.
机译:在本文中,我们研究了从EEG(脑电图)信号的癫痫risli水平分类中的FUZ / Y输出的优化。模糊技术应用于第一级分类器,以基于提取的参数对癫痫的风险水平分类,该参数包括来自患者的EEG信号等能量,方差,峰值,尖锐尖峰波,持续时间,事件和协方差的参数。支持向量机(SVM)可以被识别为分类数据上的邮寄分类器,以获得患者癫痫风险等级的优化风险等级。癫痫发作是由突然的电气干扰引起的。每100人大约一个人会在生命中的某个时间体验癫痫发作。有时候缉获可能会因他们的演示而被忽视,这可能与其他事件(例如行程)混淆,这也可能导致落下或偏头痛。不幸的是,癫痫癫痫发作的发生似乎是不可预测的,并且其过程很少理解为上述方法计算性能指数(PI)和质量值(QV)。本研究使用了一组患有癫痫患者的癫痫发现。在22.94的QV中获得高PI,例如98.5%,用于SVM优化,当分别通过模糊技术的40%和6.25的值相比。我们发现SVM方法Out在优化癫痫风险水平时执行模糊技术。在印度人数患有癫痫每年都在增加。诊断和治疗中涉及的复杂性在性质上具有成本效益。本文旨在合成具有成本效益的SVM机制,以对患者的癫痫风险水平进行分类。

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