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首页> 外文期刊>Knowledge-Based Systems >Performance evaluation of time-frequency image feature sets for improved classification and analysis of non-stationary signals: Application to newborn EEG seizure detection
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Performance evaluation of time-frequency image feature sets for improved classification and analysis of non-stationary signals: Application to newborn EEG seizure detection

机译:时频图像特征集的性能评估,以改善非平稳信号的分类和分析:在新生儿脑电图癫痫发作检测中的应用

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摘要

This study demonstrates that a time-frequency (TF) image pattern recognition approach offers significant advantages over standard signal classification methods that use t-domain only or f-domain only features. Two approaches are considered and compared. The paper describes the significance of the standard TF approach for non-stationary signals; TF signal (TFS) features are defined by extending t-domain or (domain features to a joint (t, f) domain resulting in e.g. TF flatness and TF flux. The performance of the extended TFS features is comparatively assessed using Receiver Operating Characteristic (ROC) analysis Area Under the Curve (AUC) measure. Experimental results confirm that the extended TFS features generally yield improved performance (up to 19%) when compared to the corresponding t-domain and f-domain features.
机译:这项研究表明,与仅使用t域或仅f域功能的标准信号分类方法相比,时频(TF)图像模式识别方法具有明显的优势。考虑并比较了两种方法。本文描述了标准TF方法对非平稳信号的重要性; TF信号(TFS)特征是通过将t域或(域特征扩展到联合(t,f)域,从而导致TF平坦度和TF通量来定义的。使用接收器工作特性( ROC)分析曲线下面积(AUC)度量实验结果证实,与相应的t域和f域特征相比,扩展的TFS特征通常可提高性能(最高19%)。

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