A Multi-Modal Behavior Quantitative Analysis Model for Autism Early Screening.

Jiayi Lei, E. Zhang,Yingying She, Xin Wang, Yuhan Liao,Bin Hu,Hang Wu,Minqiang Yang, Jiajia Tian, Yong Wang

2023 IEEE International Conference on Systems, Man, and Cybernetics (SMC)(2023)

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摘要
Human-Computer Interaction (HCI) and Machine Learning (ML) technologies have potential for the behavioral screening of autistic children but how to design a tool and analyse behavior reliably is challenging. Based on psychophysiological computation, this paper proposes an interactive behavior perception analytical model for autism screening. We presented the multi-scenario reactive behavior paradigms that designed based on the atypical characteristics of autistic children. We recorded the eye movement data and facial data of 91 participants, and performed multi-modal feature extraction, used machine learning to train classification model. We conducted comparative experiments, and the experimental results verified the advantages of multi-scenario paradigms and multi-modal feature groups, which indicates that our analysis methods and screening models are effective and reliable and have real research significance.
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关键词
Quantitative Model,Early Screening,Screening Model,Multimodal Analysis,Multimodal Behavior,Quantitative Analysis Model,Autism Spectrum,Eye Movements,Interaction Model,Human-computer Interaction,Behavioral Data,Classification Results,Behavioral Analysis,Eye-tracking,Eye Contact,Visual Attention,Emotion Recognition,Face Images,Emotional Features,Basic Emotions,Eyewall,Fixation Count,Joint Attention,Social Image,Emotion Recognition Accuracy,Total Features,Blink Rate,Web Camera,Stimulus Paradigm,Face Detection
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