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EEG based hearing states detection using AR modeling techniques

机译:使用AR建模技术的基于EEG的听力状态检测

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摘要

In this paper, a simple method to determine the hearing threshold state of a subject using the parametric model of EEG time series signal has been investigated. The proposed autoregressive (AR) pole-tracking algorithm tracks the position of the poles and extracts the upper and lower hearing threshold factors of a subject. From the results, for abnormal hearing subjects, the hearing-threshold values are about 40-50 % higher than the normal hearing subjects. The results also show that the hearing threshold factors obtained using AR modeling clearly distinguishes the normal and abnormal hearing states across 20 subjects. The results obtained are promising and it can be used to determine the hearing-threshold state for newborns, infants, and multiple handicaps, a person who lacks verbal communication and behavioral response to the sound stimulation.
机译:本文研究了一种利用脑电时间序列信号的参数模型确定受试者听力阈值状态的简单方法。提出的自回归(AR)极点跟踪算法可跟踪极点的位置,并提取对象的上,下听力阈值因子。从结果来看,对于听力异常的受试者,其听力阈值比正常听力的受试者高约40-50%。结果还表明,使用AR建模获得的听力阈值因素可以清楚地区分20个受试者的正常和异常听力状态。所获得的结果是有希望的,并且可以用于确定新生儿,婴儿和多个障碍的听阈状态,该人缺乏对声音刺激的口头交流和行为反应。

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