Training and Profiling a Pediatric Facial Expression Classifier for Children on Mobile Devices: Machine Learning Study (Preprint)

JMIR Formative Research(2022)

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摘要
With specialized design and optimization techniques, facial expression classifiers can become lightweight enough to run on mobile devices and achieve state-of-the-art performance. There is potentially a "data shift" phenomenon between facial expressions of children compared with adults; our classifiers performed much better when trained on children. Certain underrepresented ethnic groups (e.g., South Asian and African American) also perform significantly worse than groups such as European Caucasian despite similar data quality. Our models can be integrated into mobile health therapies to help diagnose autism spectrum disorder and provide targeted therapeutic treatment to children.
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关键词
ASD,Image classification,affective computing,algorithm,autism,autism spectrum disorder,child,classification,classifier,computer vision,deep learning,developmental disorder,diagnostic tool,digital therapy,edge computing,emotion recognition,image analysis,mHealth,machine learning,machine learning for health,mobile health,model,neural network,pediatrics,smartphone
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