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ASD-EVNet: An Ensemble Vision Network based on Facial Expression for Autism Spectrum Disorder Recognition

Assil Jaby, Md Baharul Islam, Md Atiqur Rahman Ahad

202311 citationsDOIOpen Access PDF

Abstract

Autism Spectrum Disorder (ASD) is a neurodevelopmental disorder that affects individuals’ social interaction, communication, and behavior. Early diagnosis and intervention are critical for the well-being and development of children with ASD. Available methods for diagnosing ASD are unpredictable (or with limited accuracy) or require significant time and resources. We aim to enhance the precision of ASD diagnosis by utilizing facial expressions, a readily accessible and limited time-consuming approach. This paper presents ASD Ensemble Vision Network (ASD-EVNet) for recognizing ASD based on facial expressions. The model utilizes three Vision Transformer (ViT) architectures, pre-trained on imageNet-21K and fine-tuned on the ASD dataset. We also develop an extensive collection of facial expression-based ASD dataset for children (FADC). The ensemble learning model was then created by combining the predictions of the three ViT models and feeding it to a classifier. Our experiments demonstrate that the proposed ensemble learning model outperforms and achieves state-of-the-art results in detecting ASD based on facial expressions.

Topics & Concepts

Autism spectrum disorderFacial expression recognitionFacial expressionComputer scienceFacial recognition systemArtificial intelligenceAutismExpression (computer science)Pattern recognition (psychology)Speech recognitionComputer visionPsychologyDevelopmental psychologyProgramming languageAutism Spectrum Disorder ResearchAssistive Technology in Communication and MobilityChild Development and Digital Technology