Lie Detection Based on Acoustic Analysis.

IF 2.5 4区 医学 Q1 AUDIOLOGY & SPEECH-LANGUAGE PATHOLOGY
Noé Xiu, Wenmei Li, Zhaoqi Liu, Béatrice Vaxelaire, Rudolph Sock, Zhenhua Ling
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Abstract

Purpose: Acoustic lie detection, prized for its covert nature and capability for remote processing, has spurred growing interest in acoustic features that can reliably aid in lie detection. In this study, the aim was to construct an acoustic polygraph based on a variety of phonetic and acoustic features rather than on electrodermal, cardiovascular, and respiratory values.

Methods: Sixty-two participants from the University of Science and Technology of China, aged 18-30 years old, were involved in the mock crime experiment and were randomly assigned to the innocent and guilty groups. We collected 31 deceptive and truthful audios to analyze the performance of voice onset time (VOT) in lie detection.

Results: Our findings revealed that VOT performed well in lie detection. Both the average sensitivity and specificity of the area under the curve are 0.888, and its lower and upper confidence limit are up to 0.803 and 0.973 respectively at the 95% confidence level. Although the other acoustic features had a lower reference value, they also provided a general trend in the judgment of lie detection.

Conclusions: Our results suggested that some acoustic features can be effectively used as aids to lie detection. Through a similar approach, we will explore more acoustic and phonetic features that contribute to detecting lies in the future.

基于声学分析的谎言检测
目的:声学测谎因其隐蔽性和远程处理能力而备受推崇,因此人们对能够可靠地帮助测谎的声学特征的兴趣与日俱增。在这项研究中,我们的目的是根据各种语音和声学特征而不是皮电、心血管和呼吸数值来构建声学测谎仪:来自中国科学技术大学的 62 名 18-30 岁的参与者参与了模拟犯罪实验,并被随机分配到无辜组和有罪组。我们收集了 31 段欺骗性音频和真实音频,以分析语音起始时间(VOT)在测谎中的表现:结果:我们的研究结果表明,VOT 在测谎中表现良好。曲线下面积的平均灵敏度和特异度均为 0.888,在 95% 的置信水平下,其置信下限和置信上限分别高达 0.803 和 0.973。虽然其他声音特征的参考值较低,但它们也为谎言检测的判断提供了总体趋势:我们的研究结果表明,一些声音特征可以有效地用作谎言检测的辅助工具。通过类似的方法,我们将在未来探索更多有助于检测谎言的声学和语音特征。
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来源期刊
Journal of Voice
Journal of Voice 医学-耳鼻喉科学
CiteScore
4.00
自引率
13.60%
发文量
395
审稿时长
59 days
期刊介绍: The Journal of Voice is widely regarded as the world''s premiere journal for voice medicine and research. This peer-reviewed publication is listed in Index Medicus and is indexed by the Institute for Scientific Information. The journal contains articles written by experts throughout the world on all topics in voice sciences, voice medicine and surgery, and speech-language pathologists'' management of voice-related problems. The journal includes clinical articles, clinical research, and laboratory research. Members of the Foundation receive the journal as a benefit of membership.
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