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SVM-based IADL score correlation and classification with EEG/ECG signals

机译:基于SVM的IADL分数相关性和EEG / ECG信号分类

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This paper explores the correlation between the subjective IADL assessment and the objective EEG/ECG signals measurement. Thirty elderly participants are scored by IADL and classified into three groups, that is, the high score, the medium score and the low score groups, and each participant's collected EEG/ECG signals is then attributed to the groups correspondingly. Six equations of extraction methods, including five for EEG and one for ECG, are applied to the EEG/ECG signals from each participant. Thereafter, the extracted features are trained by SVM and classified by one-against-all method in terms of group. The experiment is shown that 82% of accuracy can be reached by the proposed extracted methods and the proposed framework.
机译:本文探讨了主观IADL评估与客观EEG / ECG信号测量之间的相关性。 IADL对30位老年参与者进行了评分,并将其分为三组,即高分,中分和低分组,然后将每个参与者收集的EEG / ECG信号相应地归入各组。六个提取方法的方程式,包括用于EEG的五个方程式和用于ECG的一个方程式,被应用于来自每个参与者的EEG / ECG信号。此后,提取的特征通过SVM进行训练,并通过反对所有的方法按组进行分类。实验表明,提出的提取方法和提出的框架可以达到82%的准确性。

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