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Real-Time Baseline Wander Removal from Electrooculography Using Probabilistic Baseline Prediction

机译:使用概率基线预测,实时基线从电胶中移除

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摘要

Electrooculography (EOG) is a convenient method for analysing eye movement. A human eye acts like a dipole where the back of the eye is relatively negative than the front. EOG measures the field generated by this dipole-Iike property of an eye with electrodes. It is low cost, easily installed, and most importantly, non-invasive. However, EOG is not conventionally adopted because of difficulties in removing baseline wander (BW) noise. Many studies have successfully removed this noise in repetitive and predictable signals such as electrocardiography (ECG), but not many accomplishments have been made in non-predictable signals such as EOG. This paper proposes an algorithm that removes BW from EOG in real-time by predicting the baseline. The algorithm constantly differentiates the signal when the subject is looking forward, referred to as the reference data in this paper, from the signals when the subject is looking elsewhere using standard deviation. Then, the average of certain window of reference data is taken to predict the baseline. A simulation comparison between some of the other methods used for ECG and EOG BW removal is presented which shows that the proposed algorithm performs exceptionally well, especially considering that it is one of the few algorithms that can remove the BW in real-time.
机译:电胶(EOG)是分析眼球运动的方便方法。一种人眼法类似于偶极子,其中眼睛的背部比前面相对负。 Eog测量由电极的眼睛的偶极物性生成的田间。它的成本低,易于安装,最重要的是,无侵入性。然而,由于难以消除基线漫游(BW)噪声,因此不可常规采用EOG。许多研究已经成功地消除了这种噪声,以重复和可预测的信号(例如心电图(ECG)),但在诸如EOG之类的不可预测信号中,没有许多成就。本文提出了一种通过预测基线实时从Eog中删除B​​W的算法。当对象期待时,算法不断地区分信号,从本文中称为参考数据,当主题在使用标准偏差时看该主题时的信号。然后,采用某些参考数据窗口的平均值来预测基线。提出了用于ECG和EOG BW去除的一些其他方法之间的模拟比较,其示出了所提出的算法非常良好地执行,特别是考虑到它是可以实时地移除BW的少数算法之一。

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