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CLASSIFICATION AND DETECTION OF SINGLE EVOKED BRAIN POTENTIALS USING TIME-FREQUENCY AMPLITUDE FEATURES.

机译:使用时频振幅特征对单个诱发脑电势进行分类和检测。

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摘要

The classification and detection of event-related brain potentials were investigated using statistical pattern recognition techniques. Amplitudes at sampled time points and frequency quantities have previously been used as features. Improvements to these procedures were obtained by using features from the time-frequency plane to exploit the geometric relationship between time and frequency, capitalizing on the non-stationarity of the evoked potential signals and the electroencephalogram (EEG). These features were transformed from the original data sets based upon a two-step classification/feature selection procedure which uses selected frequencies from step-1 as parameters for data filtering in step-2. Features are selected from the filtered data and bounds on the expected classification accuracy were computed for various sets of data.; This system was used for classification between 2 classes of evoked potentials and for the detection of a particular single evoked potential in the electroencephalogram. A detector program was developd to operate on the test data using the predetermined feature sets selected by the two-step system. The receiver operating curves were computed indicating the detector performance and the detection accuracies were evaluated for various test data sets.; Actual EEG data from human subjects participating in visual stimulation Sternberg paradigm experiments, and several artificially generated data sets were used for testing the ability of the methods to distinguish between the types of signals. The results of the new method were compared with those of previous methods using 1-step techniques, and significant improvements in classification and detection accuracies were obtained.
机译:使用统计模式识别技术研究了与事件相关的脑电势的分类和检测。先前已将采样时间点的振幅和频率量用作特征。通过利用时频平面中的特征来利用时间和频率之间的几何关系,并利用诱发电位信号和脑电图(EEG)的非平稳性,对这些程序进行了改进。这些特征是根据两步分类/特征选择过程从原始数据集中转换而来的,该过程使用从步骤1中选择的频率作为参数进行步骤2中的数据过滤。从过滤后的数据中选择特征,并针对各种数据集计算预期分类精度的界限。该系统用于在两类诱发电位之间进行分类,并用于检测脑电图中特定的单个诱发电位。开发了检测器程序,以使用由两步系统选择的预定功能集对测试数据进行操作。计算接收器的工作曲线,表明检测器的性能,并评估各种测试数据集的检测精度。来自参与视觉刺激Sternberg范例实验的人类受试者的实际EEG数据,以及几个人工生成的数据集,用于测试该方法区分信号类型的能力。将新方法的结果与使用一步技术的以前方法的结果进行比较,并获得了明显的分类和检测准确性改善。

著录项

  • 作者

    MOSER, JEFFREY MILES.;

  • 作者单位

    Purdue University.;

  • 授予单位 Purdue University.;
  • 学科 Engineering Biomedical.
  • 学位 Ph.D.
  • 年度 1984
  • 页码 235 p.
  • 总页数 235
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物医学工程;
  • 关键词

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