利用脑电瞬变参数进行测谎的研究

J. Immanuel, Ajay Joshua, S. George
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引用次数: 7

摘要

从人脑中提取的脑电图信号的使用,显示了在检测一个人的谎言和虚假意图方面有希望的信息,其准确性更高。脑电图仪检测到的身体变化是伴随人的反应而来的,是人无法控制的。当一个人说谎时,眨眼就会发生变化。眨眼频率不能简单地通过物理观察来计算。还有一些其他的方法来检测眨眼频率,利用眼动追踪装置,然而,这种方法使用脑电图信号提取眼部特征,允许该方法与其他技术相结合,利用脑电图信号检测谎言。这意味着一个单一的脑电图采集设备可以作为一个全面的测谎仪。一个人在说谎时眨眼的频率会急剧下降,然后在说谎后迅速增加。这可以用来检查对问题的回答是对还是错。为了本研究的目的,我们收集了10个受试者的数据,每个受试者取10个读数。我们研究了受试者在说谎时和说谎后每分钟眨眼的次数。然后用这些结果来检验我们的方法是否准确。研究结果显示,撒谎时眨眼次数减少,准确率达到95.12%。这证明了从脑电数据中提取眨眼特征可以作为检测受试者谎言的有效手段。这种方法为现有的测谎测试提供了一种替代方法,可以想象,将来在法庭上是可以接受的。
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A Study on Using Blink Parameters from EEG Data for Lie Detection
The use of EEG signals taken from human brain showcases promising information for detecting lies and false intent in a person with increased accuracy. The physical changes detected by and EEG device are concomitant to human reaction and cannot be controlled by a person. Blinking is one such component that changes when a person lies. Blink rate cannot be simply calculated by physical observation. There are certain other methods to detect blink rate, making use of ocular tracking devices however, this method of using EEG signals to extract ocular characteristics allows this methodology to be combined with other techniques to detect lies using EEG signals. This means that a single EEG acquisition device can be used as a comprehensive lie detector. A person's blink rate decreases drastically while they are lying and then increases rapidly moments after. This can be used to check if a response to a question is true or false. For the purpose of this study we have collected data from 10 subjects, taking 10 readings from each. We have studied the number of blinks and thus the blinks per minute of a subject during and after they have told a lie. The results were then used to check if the accuracy of our method. The outcomes of the study showed a decrease in blink rate during a lie with 95.12% accuracy. This proves that blink characteristics extracted from EEG datasets can be used as an effective means to detect lies in a subject. This method provides an alternative to the existing polygraph tests used in lie detection which can conceivably be made admissible in court in the future.
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