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Exploring Douglas-Peucker Algorithm in the Detection of Epileptic Seizure from Multicategory EEG Signals

机译:在从多类别脑电信号中检测癫痫发作的道格拉斯-皮克算法探索

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摘要

Discovering the concealed patterns of Electroencephalogram (EEG) signals is a crucial part in efficient detection of epileptic seizures. This study develops a new scheme based on Douglas-Peucker algorithm (DP) and principal component analysis (PCA) for extraction of representative and discriminatory information from epileptic EEG data. As the multichannel EEG signals are highly correlated and are in large volumes, the DP algorithm is applied to extract the most representative samples from EEG data. The PCA is utilised to produce uncorrelated variables and to reduce the dimensionality of the DP samples for better recognition. To verify the robustness of the proposed method, four machine learning techniques, random forest classifier (RF), k-nearest neighbour algorithm (k-NN), support vector machine (SVM), and decision tree classifier (DT), are employed on the obtained features. Furthermore, we assess the performance of the proposed methods by comparing it with some recently reported algorithms. The experimental results show that the DP technique effectively extracts the representative samples from EEG signals compressing up to over 47% sample points of EEG signals. The results also indicate that the proposed feature method with the RF classifier achieves the best performance and yields 99.85% of the overall classification accuracy (OCA). The proposed method outperforms the most recently reported methods in terms of OCA in the same epileptic EEG database.
机译:发现脑电图(EEG)信号的隐藏模式是有效检测癫痫发作的关键部分。这项研究开发了一种基于Douglas-Peucker算法(DP)和主成分分析(PCA)的新方案,用于从癫痫性脑电数据中提取代表性和歧视性信息。由于多通道EEG信号高度相关且体积很大,因此应用DP算法从EEG数据中提取最具代表性的样本。 PCA用于产生不相关的变量并减小DP样本的维数,以便更好地识别。为了验证该方法的鲁棒性,在该算法上采用了四种机器学习技术:随机森林分类器(RF),k最近邻算法(k-NN),支持向量机(SVM)和决策树分类器(DT)。获得的功能。此外,我们通过将其与一些最近报告的算法进行比较来评估所提出方法的性能。实验结果表明,DP技术有效地从脑电信号中提取出代表性样本,压缩后的脑电信号采样点高达47%以上。结果还表明,采用RF分类器的拟议特征方法可实现最佳性能,并产生总分类准确度(OCA)的99.85%。就相同的癫痫EEG数据库中的OCA而言,拟议的方法优于最新报告的方法。

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