TER-CA-WGNN: Trimodel Emotion Recognition Using Cumulative Attribute-Weighted Graph Neural Network

Author:

Al-Saadawi Hussein Farooq Tayeb1ORCID,Das Resul1ORCID

Affiliation:

1. Technology Faculty, Department of Software Engineering, Firat University Technology, Elazig 23119, Türkiye

Abstract

Affective computing is a multidisciplinary field encompassing artificial intelligence, natural language processing, linguistics, computer science, and social sciences. This field aims to deepen our comprehension and capabilities by deploying inventive algorithms. This article presents a groundbreaking approach, the Cumulative Attribute-Weighted Graph Neural Network, which is innovatively designed to integrate trimodal textual, audio, and visual data from the two multimodal datasets. This method exemplifies its effectiveness in performing comprehensive multimodal sentiment analysis. Our methodology employs vocal inputs to generate speaker embeddings trimodal analysis. Using a weighted graph structure, our model facilitates the efficient integration of these diverse modalities. This approach underscores the interrelated aspects of various emotional indicators. The paper’s significant contribution is underscored by its experimental results. Our novel algorithm achieved impressive performance metrics on the CMU-MOSI dataset, with an accuracy of 94% and precision, recall, and F1-scores above 92% for Negative, Neutral, and Positive emotion categories. Similarly, on the IEMOCAP dataset, the algorithm demonstrated its robustness with an overall accuracy of 93%, where exceptionally high precision and recall were noted in the Neutral and Positive categories. These results mark a notable advancement over existing state-of-the-art models, illustrating the potential of our approach in enhancing Sentiment Recognition through the synergistic use of trimodal data. This study’s comprehensive analysis and significant results demonstrate the proposed algorithm’s effectiveness in nuanced emotional state recognition and pave the way for future advancements in affective computing, emphasizing the value of integrating multimodal data for improved accuracy and robustness.

Publisher

MDPI AG

Reference47 articles.

1. The impact of emotions on shopping behavior during an epidemic. What a business can do to protect customers;Szymkowiak;J. Consum. Behav.,2021

2. Pal, S., Mukhopadhyay, S., and Suryadevara, N. (2021). Development and progress in sensors and technologies for human emotion recognition. Sensors, 21.

3. Context-based emotion recognition using emotic dataset;Kosti;IEEE Trans. Pattern Anal. Mach. Intell.,2019

4. Marmpena, A. (2021). Emotional Body Language Synthesis for Humanoid Robots. [Ph.D. Thesis, University of Plymouth].

5. Ai-based modeling: Techniques, applications and research issues towards automation, intelligent and smart systems;Sarker;SN Comput. Sci.,2022

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