Statistical Feature Based Comparison of EEG in Meditation for Various Wavelet

N. Gupta, Neetu Sood, I. Saini
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引用次数: 3

Abstract

The brain is most complicated framework which involves association of billions of nerve cells (neurons) which displays rich spatiotemporal flow. Among all techniques for inspecting human brain, an immediate measure of cortical movement with a resolution less than millisecond is only obtained with EEG. Brain and meditation have a connection for centuries. This study involves statistical analysis of EEG spectral power during meditation and non-meditation. This study also deals with regular meditators in two conditions first are during meditation and second is during normal condition. The EEG signal is recorded for 40 subjects in which 20 are regular meditators and 20 are non-meditators. This recorded data is preprocessed to remove the artifacts. After that wavelet transform is applied for different wavelet functions and then Fourier transform is performed to achieve power spectrum density. It was found that theta power increases during meditation and also haar wavelet provides better results than other wavelet functions. This study signifies that with meditation there is a considerable change in EEG of person is observed.
基于统计特征的冥想脑电信号小波比较
大脑是最复杂的框架,涉及数十亿神经细胞(神经元)的关联,表现出丰富的时空流。在所有检测人脑的技术中,只有脑电图才能获得分辨率小于毫秒的皮层运动的即时测量。大脑和冥想有几个世纪的联系。本研究对冥想和非冥想时的脑电图频谱功率进行了统计分析。这项研究还涉及了两种情况下的常规冥想者:一是在冥想期间,二是在正常情况下。记录了40名受试者的脑电图信号,其中20名是定期冥想者,20名是非冥想者。对记录的数据进行预处理以去除工件。然后对不同的小波函数进行小波变换,再进行傅里叶变换得到功率谱密度。研究发现,冥想时θ波能量增加,并且有小波函数比其他小波函数提供更好的结果。本研究表明,冥想对人的脑电图有相当大的影响。
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