基于小波变换的VEP单训练样本提取

Liu Fang, Fan Zhi-gang
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引用次数: 0

摘要

基于小波变换在时域和频域具有良好的局部化特性,提出了一种基于小波变换的去噪方法,实现了从脑电背景噪声中提取单个训练样本的视觉诱发电位,便于研究单个样本响应之间的变化。这些信息可能与大脑的不同功能、外观和病理有关。传统的傅里叶滤波很难达到类似的效果。该方法与其他小波去噪方法的不同之处在于,它采用了不同的准则来选择小波系数。它最大的优点是注意到单个训练样本之间的差异,并利用高时频分辨率的特点,在EP出现的时间范围内最大程度地减少干扰因素的影响。实验结果表明,该方法不受诱发电位和脑电图的信噪比的限制,甚至可以在较低信噪比的情况下识别瞬时事件,并且更容易识别引起明显反应的样本。因此,与对原始信号进行均值去噪相比,对能引起明显响应的样本进行均值去噪得到的信号去噪可以得到更明显的平均诱发反应。此外,平均方法可以显著减少所需的记录样本数量,从而避免了记录过程中行为变化的影响。该方法既注意了单个训练样本之间的差异,又实现了从单个训练样本中提取视觉诱发电位。结果表明,将该方法应用于基于诱发反应的脑机接口系统,可以大大提高系统的速度和准确性。
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The Single Training Sample Extraction of VEP Based on Wavelet Transform
Based on the good localization characteristic of the wavelet transform both in time and frequency domain, a de-noising method based on wavelet transform is presented, which can make happen the extraction of visual evoked potentials in single training sample from the EEG background noise in favor of studying the changes between the single sample response. The information is probably related with the different function, appearance and pathologies of the brain. The traditional Fourier filter can hardly attain the similar result. This method is different from other wavelet de-noising methods in that different criteria are employed in choosing wavelet coefficient. It has a biggest virtue of noting the differences among the single training sample and making use of the characteristics of being high time frequency resolution to reduce the effect of interference factors to a maximum extent within the time scope that EP appear. The experiment result proves that this method is not restricted by the signal-to-noise ratio of evoked potential and electroencephalograph and even can recognize instantaneous event under the condition of lower signal-to-noise ratio, as well as recognize more easily the samples which evoked evident response. Therefore, more evident average evoked response could be achieved by de-nosing the signals obtained through averaging out the samples that can evoke evident responses than de-nosing the average of original signals. In addition, averaging methodology can dramatically reduce the number of record samples needed, thus avoiding the effect of behavior change during the recording process. This methodology pays attention to the differences among single training sample and also accomplishes the extraction of visual evoked potentials from single trainings sample. As a result, system speed and accuracy could be improved to a great extent if this methodology is applied to brain-computer interface system based on evoked responses.
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