Abstract

The automatic detection of deceptive behaviors has recently attracted the attention of the research community due to the variety of areas where it can play a crucial role, such as security or criminology. This work is focused on the development of an automatic deception detection system based on gaze and speech features. The first contribution of our research on this topic is the use of attention Long Short-Term Memory (LSTM) networks for single-modal systems with frame-level features as input. In the second contribution, we propose a multimodal system that combines the gaze and speech modalities into the LSTM architecture using two different combination strategies: Late Fusion and Attention-Pooling Fusion. The proposed models are evaluated over the Bag-of-Lies dataset, a multimodal database recorded in real conditions. On the one hand, results show that attentional LSTM networks are able to adequately model the gaze and speech feature sequences, outperforming a reference Support Vector Machine (SVM)-based system with compact features. On the other hand, both combination strategies produce better results than the single-modal systems and the multimodal reference system, suggesting that gaze and speech modalities carry complementary information for the task of deception detection that can be effectively exploited by using LSTMs.

Highlights

  • The only exception was the performance of the speech modality in terms of deception accuracy for the Long Short-Term Memory (LSTM) system that was worse than for the reference one

  • In terms of ACC and AUC, in the case of the Support Vector Machine (SVM)-based models, both combination strategies outperformed the corresponding systems with a single modality, Late Fusion being slightly better than Early Fusion

  • This paper deals with the development of an automatic deception detection system based on gaze and speech features

Read more

Summary

Introduction

Deception is a kind of human behavior that can be defined as the intentional attempt to produce in the receiver a false belief. [1] social media [2] or computer-mediated communications, such as chats or social networks [3]. Many applications where the automatic detection of deception plays a crucial role have arisen, mainly in areas related to security, criminology, ref. For this reason, this topic has recently attracted the attention of researchers, it is still not studied enough

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call