Abstract

The inconvenience operation of EEG P300 or functional magnetic resonance imaging (FMRI) will be overcome, when the deceptive information can be effectively detected from speech signal analysis. In this paper, the fractional Mel cepstral coefficient (FrCC) is proposed as the speech character for deception detection. The different fractional order can reveal various personalities of the speakers. The linear discriminant analysis (LDA) model (which has the ability of global optimal vector mapping) is introduced, and the performance of FrCC and MFCC in deceptive detection is compared when all the data are mapped to low dimensional. Then, the hidden Markov model (HMM) is introduced as a long-term signal analysis tool. Twenty-five male and 25 female participants are involved in the experiment. The results show that the clustering effect of optimal fractional order FrCC is better than that of MFCC. The average accuracy for male and female speaker is 59.9% and 56.2%, respectively, by using the FrCC under the LDA model. When MFCC is used, the accuracy is reduced by 3.2% and 5.9%, respectively, for male and female. The accuracy can be increased to 71.0% and 70.2% for male and female speakers when HMM is used. Moreover, some individual accuracy is increased over 20%, or even more than 85%, when FrCC is introduced. The results show that the deceptive information is indeed hidden in the speech signals. Therefore, speech-based psychophysiology calculating may be a valuable research field.

Highlights

  • Deception detection is regarded as an ancient and mysterious topic in the long history of human science, and there have accumulated many useful results

  • Results analysis and discussion In the sections ‘The experiment results for linear discriminant analysis (LDA) model’ and ‘The experiment results of hidden Markov model (HMM) model,’ the experiment results show that the identification accuracy of fractional Mel cepstral coefficient (FrCC) parameters under certain angles is higher than that of MFCC parameters

  • (A) In the LDA recognition system, the men groups’ average accuracy of FrCC with best angle is 59.9%, and MFCC is 56.3%

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Summary

Introduction

Deception detection is regarded as an ancient and mysterious topic in the long history of human science, and there have accumulated many useful results. Fractional Fourier transform (FrFT) is introduced in deceptive speech feature extraction, Linear Discriminant Analysis model (LDA) and hidden Markov model (HMM) are proposed for classification. The deceptive detection accuracy of all optimal order FrCC is higher than that of MFCC, so the acoustic characteristics of speech signals can provide some support for lie detection.

Results
Conclusion
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