首页> 外文会议>Emerging Technology in Computing, Communication and Electronics Conference >Wavelet-based Artifact Removal Algorithm for EEG Data by Optimizing Mother Wavelet and Threshold Parameters
【24h】

Wavelet-based Artifact Removal Algorithm for EEG Data by Optimizing Mother Wavelet and Threshold Parameters

机译:基于小波的伪影通过优化母小波和阈值参数来实现脑电图数据

获取原文

摘要

EEG recordings are usually affected by various artifact types come from non-neural sources and make it difficult for accurate signal classification in the later stage. Thus reliably detecting and removing artifacts from EEG by an automated signal processing algorithm is an active research area. In this paper we have developed a wavelet based artifact removal algorithm from EEG data that selects the best (optimal) threshold parameters, and hence consequently provides the best performance of artifact removal. In the proposed algorithm we choose to sweep both the wavelet filter parameter and threshold parameters until the best accuracy and/or least distortion is achieved by making a decision based on a reference dataset. The criteria for optimized selection are based on the metrics that quantify both amount of artifact removal and amount of distortion in the signal in both time and frequency domain. The algorithm is tested on synthesized EEG data that include different artifact templates and thus quantifies the performance based on several time and frequency domain measures. The achieved results prove that by selecting the optimum mother wavelet and parameter values adaptively would give the best performance both with regard to amount of artifact removal and least signal distortion compared with selecting any predefined mother wavelet and/or constant threshold parameter. This research would help the EEG signal analysis community a platform to work further in future on such problem to be able to properly select the wavelet parameters.
机译:EEG录音通常受各种工件类型的影响来自非神经源,使其难以在后期的准确信号分类。因此,通过自动信号处理算法可靠地检测和移除来自EEG的伪影是有源研究区域。在本文中,我们已经开发了一种基于小波的伪影从EEG数据的伪影删除算法,从而选择最佳(最佳)阈值参数,因此因此提供了伪像去除的最佳性能。在所提出的算法中,我们选择扫描小波滤波器参数和阈值参数,直到通过基于参考数据集进行判定来实现最佳精度和/或最小失真。优化选择的标准基于测量在时间和频域中信号中信号中的伪像去除量和失真量的度量。该算法在合成的EEG数据上测试,该数据包括不同的工件模板,从而根据几次和频域测量来定量性能。所实现的结果证明,通过选择最佳母小波和参数值,与选择任何预定义的母小波和/或恒定阈值参数相比,在相比之下的伪像去除和最小信号失真的量来提供最佳性能。本研究将帮助EEG信号分析社区在将来进一步工作的平台,以便能够正确选择小波参数。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号