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On the use of time-frequency features for detecting and classifying epileptic seizure activities in non-stationary EEG signals

机译:关于使用时频特征检测和分类非平稳EEG信号中的癫痫发作活动

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This paper proposes new time-frequency features for detecting and classifying epileptic seizure activities in non-stationary EEG signals. These features are obtained by translating and combining the most relevant time-domain and frequency-domain features into a joint time-frequency domain in order to improve the performance of EEG seizure detection and classification of non-stationary EEG signals. The optimal relevant translated features are selected according maximum relevance and minimum redundancy criteria. The experiment results obtained on real EEG data, show that the use of the translated and the selected relevant time-frequency features improves significantly the EEG classification results compared against the use of both original time-domain and frequency-domain features.
机译:本文提出了新的时频特征,用于检测和分类非平稳脑电信号中的癫痫发作活动。这些特征是通过将最相关的时域和频域特征转换并组合为联合时频域而获得的,以提高脑电图癫痫发作检测和非平稳脑电信号分类的性能。最佳相关翻译特征是根据最大相关性和最小冗余标准来选择的。在真实EEG数据上获得的实验结果表明,与使用原始时域和频域特征相比,使用转换后的和选定的相关时频特征可以显着改善EEG分类结果。

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