首页> 外文会议>Neural Engineering, 2009. NER '09 >Detection and removal of ocular artifacts using Independent Component Analysis and wavelets
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Detection and removal of ocular artifacts using Independent Component Analysis and wavelets

机译:使用独立分量分析和小波检测和去除眼部伪影

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In this paper a novel approach for ocular artifact (OA) removal is proposed in which a combination of independent component analysis and wavelet-based noise reduction is utilized for detection and removal of OA. At the first stage, independent basis functions attributed to OA are computed using FastICA algorithm. This is followed by designing a wavelet basis function which is tuned to have sufficient similarity in its waveform to the independent basis functions of OA. We then utilize the designed wavelet for signal decomposition in a standard discrete wavelet transform where by deleting the approximation and summing up the details of signal decomposition, we arrive at a sufficiently artifact-free EEG signal. The approach excludes thresholding challenges of wavelets and works both for eye blinks and eye movements. Applying our algorithm to 420 4-s EEG epochs, the method exhibits high performance for the removal of OA artifacts. Our wavelet design method for noise reduction can be extended to the removal other types of EEG artifacts.
机译:在本文中,提出了一种新颖的眼神器(OA)去除方法,其中独立成分分析和基于小波的降噪相结合,用于OA的检测和去除。在第一阶段,使用FastICA算法计算归因于OA的独立基础函数。接下来,设计一个小波基函数,将其调整为与OA的独立基函数在波形上具有足够的相似性。然后,我们将设计的小波用于标准离散小波变换中的信号分解,其中通过删除近似值并总结信号分解的细节,我们得到了一个完全没有伪影的EEG信号。该方法排除了小波的阈值挑战,并且适用于眨眼和眼球运动。将我们的算法应用于420个4-s EEG时期,该方法在去除OA伪影方面表现出很高的性能。我们的降噪小波设计方法可以扩展到去除其他类型的EEG伪影。

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