自闭症谱系障碍
面部表情
心理学
地标
自闭症
典型地发展
动力学(音乐)
人工智能
认知心理学
可预测性
计算机视觉
计算机科学
发展心理学
数学
教育学
统计
作者
Pradeep Raj Krishnappa Babu,J. Matías Di Martino,Zhuoqing Chang,Sam Perochon,Kimberly L. H. Carpenter,Scott N. Compton,Steven Espinosa,Géraldine Dawson,Guillermo Sapiro
标识
DOI:10.1109/taffc.2021.3113876
摘要
Atypical facial expression is one of the early symptoms of autism spectrum disorder (ASD) characterized by reduced regularity and lack of coordination of facial movements. Automatic quantification of these behaviors can offer novel biomarkers for screening, diagnosis, and treatment monitoring of ASD. In this work, 40 toddlers with ASD and 396 typically developing toddlers were shown developmentally-appropriate and engaging movies presented on a smart tablet during a well-child pediatric visit. The movies consisted of social and non-social dynamic scenes designed to evoke certain behavioral and affective responses. The front-facing camera of the tablet was used to capture the toddlers' face. Facial landmarks' dynamics were then automatically computed using computer vision algorithms. Subsequently, the complexity of the landmarks' dynamics was estimated for the eyebrows and mouth regions using multiscale entropy. Compared to typically developing toddlers, toddlers with ASD showed higher complexity (i.e., less predictability) in these landmarks' dynamics. This complexity in facial dynamics contained novel information not captured by traditional facial affect analyses. These results suggest that computer vision analysis of facial landmark movements is a promising approach for detecting and quantifying early behavioral symptoms associated with ASD.
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