Meditation EEG Overview Based on Subband Features Quantified by AR Model
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概要
- 論文の詳細を見る
This paper reports a computerized scheme Subband-AR EEG Viewer that provides a comprehensive view of the meditation EEG record. The scheme is mainly designed to trace the varying spectral characteristics in meditation EEG. To accomplish this task, a meditation EEG signal is first decomposed into subband components by tree-structured filter banks. The second-order autoregressive model is then applied to each subband component to estimate its root frequency. Based on the estimated root frequencies and sound logic, specific criterion can be deduced for a particular problem-domain application. To demonstrate the performance of the proposed scheme, two algorithms are introduced for slow α-rhythm detection and meditation EEG interpretation. These algorithms do not require exhausting work at determining appropriate parameters in implementation. Further, due to the second-order autoregressive model adopted, the computation load is greatly reduced. This approach is practically favorable to long-term EEG monitoring and real-time processing, Finally, the meditation scenario can be illustrated by a running gray-scale chart with each gray tone coding a particular EEG rhythmic pattern. Observed meditation scenarios differ significantly from those of the control subjects.
- 国際生命情報科学会の論文
- 2006-03-01
著者
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Lo Pei‐chen
National Chiao Tung Univ. Hsinchu Twn
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Liao Hsien‐cheng
National Chiao Tung Univ. Hsinchu Twn
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Liao Hsien-cheng
Dept. Of Electrical And Control Engineering National Chiao Tung Univ.
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LO Pei-Chen
Dept. of Electrical and Control Engineering, National Chiao Tung Univ.
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Lo Pei-chen
Dept. Of Electrical And Control Engineering National Chiao Tung Univ.
関連論文
- Investigation on Spatiotemporal Characteristics of Zen-Meditation EEG Rhythms
- Meditation EEG Overview Based on Subband Features Quantified by AR Model