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Wavelet based head movement artifact removal from electrooculography signals

机译:基于小波的眼动信号去除头部运动伪影

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Electrooculography (EOG) signals acquire different types of eye movements, which can be employed for human-machine interfaces (HMI) and also for diagnostic purposes. In realistic circumstances, EOG signals tend to be contaminated with noise due to unconstrained head movements. This noise degrades the signal quality as well as increases the misclassification rate of eye movement detection. General filtering and preprocessing techniques are unable to remove this noise. This paper presents a novel approach of head-movement noise removal from EOG signals by employing a biorthogonal wavelet transform to extract the level-4 approximation coefficients, which are also exploited as features classified by k- nearest neighbor (kNN) classifier. This approach enhances the classification performance remarkably. Even when this wavelet based technique is applied as denoising technique and features to the prior arts, it improves the performance of those existing techniques too. Moreover, the proposed technique is suitable for real time applications.
机译:眼电图(EOG)信号可获取不同类型的眼睛运动,可将其用于人机界面(HMI)以及用于诊断目的。在现实情况下,由于不受限制的头部运动,EOG信号容易被噪声污染。这种噪声会降低信号质量,并增加眼睛运动检测的误分类率。常规的过滤和预处理技术无法消除这种噪声。本文提出了一种新颖的方法,该方法通过使用双正交小波变换来提取4级近似系数,从而从EOG信号中去除头部运动噪声,该系数也被k最近邻(kNN)分类器分类为特征。这种方法显着提高了分类性能。即使当这种基于小波的技术被用作现有技术的去噪技术和特征时,它也改善了那些现有技术的性能。而且,所提出的技术适合于实时应用。

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