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Classification for Imperfect EEG Epileptic Seizure in IoT applications: A Comparative Study

机译:物联网应用中不完善的脑电图癫痫发作的分类:比较研究

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Epileptic seizure detection could be detected through investigating the electroencephalography (EEG), which is deemed to be very important for IoT wearable sensor-based health systems. EEG-based classification is crucial for a wide-range of applications to analyze real-time vital signs using features concerning predefined set of data classes. The aim of this paper is to conduct a comparative study for several classification techniques and demonstrate the effect of uncertainty in the EEG data on the classification accuracy. We define a model for decomposing the EEG using various transformation such as discrete cosine transform, discrete wavelet transform into several sub-bands. After feature extraction, a comparative study to assess the classification algorithms' performance is conducted. In addition, we evaluate their overall accuracy and complexity as performance measures. For this purpose, we use the support vector machine (SVM) and the Artificial Neural Network (ANN). These are chosen as classifier models to study the performance of the obtained features. The discussion will include the evaluation of the classifiers' performance using the EEG-based epileptic seizure data in two categories, noiseless and noisy. In addition, there are some statistical features extracted to characterize the complete EEG data feeding to these two classifiers. A publically available EEG dataset is employed for both normal and epileptic seizure for automatic epileptic seizure detection as a benchmark.
机译:可通过研究脑电图(EEG)来检测癫痫性癫痫发作的检测,这对于基于IoT可穿戴式传感器的卫生系统非常重要。基于EEG的分类对于各种应用程序使用涉及预定义的数据类别集的功能来分析实时生命体征至关重要。本文的目的是对几种分类技术进行比较研究,并证明脑电数据的不确定性对分类准确性的影响。我们定义了一个模型,用于使用各种变换(例如,离散余弦变换,离散小波变换)分解成几个子带的EEG。在特征提取之后,进行了比较研究以评估分类算法的性能。另外,我们评估它们的整体准确性和复杂性作为性能指标。为此,我们使用支持向量机(SVM)和人工神经网络(ANN)。选择这些作为分类器模型以研究获得的功能的性能。讨论将包括使用基于EEG的癫痫发作数据将分类器的性能评估为两类,即无噪声和有噪声。此外,还提取了一些统计特征来表征馈入这两个分类器的完整EEG数据。正常和癫痫发作均采用可公开获得的EEG数据集,以自动进行癫痫发作检测为基准。

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