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Main Authors: Abdelwahab, Abdelrahman, Vishnubhatla, Akshaj, Vaswani, Ayaan, Bharathulwar, Advait, Kommaraju, Arnav
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2411.08885
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author Abdelwahab, Abdelrahman
Vishnubhatla, Akshaj
Vaswani, Ayaan
Bharathulwar, Advait
Kommaraju, Arnav
author_facet Abdelwahab, Abdelrahman
Vishnubhatla, Akshaj
Vaswani, Ayaan
Bharathulwar, Advait
Kommaraju, Arnav
contents Inaccuracies in polygraph tests often lead to wrongful convictions, false information, and bias, all of which have significant consequences for both legal and political systems. Recently, analyzing facial micro-expressions has emerged as a method for detecting deception; however, current models have not reached high accuracy and generalizability. The purpose of this study is to aid in remedying these problems. The unique multimodal transformer architecture used in this study improves upon previous approaches by using auditory inputs, visual facial micro-expressions, and manually transcribed gesture annotations, moving closer to a reliable non-invasive lie detection model. Visual and auditory features were extracted using the Vision Transformer and OpenSmile models respectively, which were then concatenated with the transcriptions of participants micro-expressions and gestures. Various models were trained for the classification of lies and truths using these processed and concatenated features. The CNN Conv1D multimodal model achieved an average accuracy of 95.4%. However, further research is still required to create higher-quality datasets and even more generalized models for more diverse applications.
format Preprint
id arxiv_https___arxiv_org_abs_2411_08885
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Enhancing Lie Detection Accuracy: A Comparative Study of Classic ML, CNN, and GCN Models using Audio-Visual Features
Abdelwahab, Abdelrahman
Vishnubhatla, Akshaj
Vaswani, Ayaan
Bharathulwar, Advait
Kommaraju, Arnav
Multimedia
Artificial Intelligence
Computer Vision and Pattern Recognition
Sound
Audio and Speech Processing
Inaccuracies in polygraph tests often lead to wrongful convictions, false information, and bias, all of which have significant consequences for both legal and political systems. Recently, analyzing facial micro-expressions has emerged as a method for detecting deception; however, current models have not reached high accuracy and generalizability. The purpose of this study is to aid in remedying these problems. The unique multimodal transformer architecture used in this study improves upon previous approaches by using auditory inputs, visual facial micro-expressions, and manually transcribed gesture annotations, moving closer to a reliable non-invasive lie detection model. Visual and auditory features were extracted using the Vision Transformer and OpenSmile models respectively, which were then concatenated with the transcriptions of participants micro-expressions and gestures. Various models were trained for the classification of lies and truths using these processed and concatenated features. The CNN Conv1D multimodal model achieved an average accuracy of 95.4%. However, further research is still required to create higher-quality datasets and even more generalized models for more diverse applications.
title Enhancing Lie Detection Accuracy: A Comparative Study of Classic ML, CNN, and GCN Models using Audio-Visual Features
topic Multimedia
Artificial Intelligence
Computer Vision and Pattern Recognition
Sound
Audio and Speech Processing
url https://arxiv.org/abs/2411.08885