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High-resolution time-frequency analysis of somatosensory evoked potential components by means of matching pursuit

机译:通过匹配追踪对体感诱发电位成分进行高分辨率时频分析

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This paper proposes to apply a high-resolution time-frequency analysis (TFA) algorithm, the matching pursuit (MP), to extract and identify detail components of somatosensory evoked potential (SEP) signals. Conventional TFA methods showed limited time-frequency resolution in short-period nonstationary SEP signals so that they cannot reveal detail components in time-frequency domain. The MP algorithm can decompose a SEP signal into a number of elementary components and provide a time-frequency parameter description of decomposed components. The stable components can be revealed by statistical analysis and classification of the extracted parameters. Experimental results on cortical SEP signals of rats show that a series of stable SEP components can be identified using the MP decomposition algorithm.
机译:本文提出应用高分辨率时频分析(TFA)算法,匹配追踪(MP)来提取和识别体感诱发电位(SEP)信号的详细成分。常规的TFA方法在短期非平稳SEP信号中显示出有限的时频分辨率,因此它们无法在时频域中揭示细节分量。 MP算法可以将SEP信号分解为许多基本成分,并提供分解成分的时频参数描述。可以通过统计分析和提取参数的分类来揭示稳定的成分。对大鼠皮质SEP信号的实验结果表明,使用MP分解算法可以识别出一系列稳定的SEP成分。

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