Facial Image Detection for Severity Level Prediction of Autism Spectrum Disorder Using Machine Learning Algorithm

Darmiyati, Iin and Nugroho, Hanung Adi and Soesanti, Indah (2024) Facial Image Detection for Severity Level Prediction of Autism Spectrum Disorder Using Machine Learning Algorithm. In: 2024 IEEE International Conference on Artificial Intelligence and Mechatronics Systems (AIMS), 21 - 23 Februari 2024, Bandung.

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Abstract

Autism spectrum disorder (ASD) is a neurodevelopmental condition impacting social interaction, communication, and behavior. Treatment for ASD is individualized based on three severity levels. Machine Learning streamlines clinical assessments by utilizing facial expression recognition to gauge autism severity, employing distance features processed through Euclidean and Geodesic methods. The proposed machine learning approach for assessing autism severity, incorporating landmark detection via gaze probabilities, has been validated by experts and therapists, achieving an 83 accuracy rate. Based on the experimental results, the Decision Tree exhibits superior accuracy at 83.42, outperforming KNN (82.58), Random Forest (82.17), Gradi- ent Boosting (81.44), XGBoost (79.04), Adaboost (78.42), and Logistic Regression (74.77) in terms of classification accuracy when predicting facial images. © 2024 IEEE.

Item Type: Conference or Workshop Item (Paper)
Additional Information: Cited by: 1
Uncontrolled Keywords: Decision trees; Diseases; Face recognition; Geodesy; Machine learning; Autism spectrum disorders; Condition; Euclidean distance; Facial expression recognition; Facial images; Geodesic distances; Image detection; Landmark detection; Machine learning algorithms; Machine-learning; Adaptive boosting
Subjects: T Technology > TK Electrical engineering. Electronics Nuclear engineering
Divisions: Faculty of Engineering > Electrical and Information Technology Department
Depositing User: Rita Yulianti Yulianti
Date Deposited: 18 Feb 2025 03:59
Last Modified: 18 Feb 2025 03:59
URI: https://ir.lib.ugm.ac.id/id/eprint/13720

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