Journal ArticleOpen Access
Improved Transfer-Learning-Based Facial Recognition Framework to Detect Autistic Children at an Early Stage
Authors
Author Affiliations
Gono University, Jahangirnagar University, Noakhali Science and Technology University, Gopalganj Science and Technology University, ...
Published InBrain Sciences
Year2021
Citations138
Abstract
Autism spectrum disorder (ASD) is a complex neuro-developmental disorder that affects social skills, language, speech and communication. Early detection of ASD individuals, especially children, could help to devise and strategize right therapeutic plan at right time. Human faces encode important markers that can be used to identify ASD by analyzing facial features, eye contact, and so on. In this work, an improved transfer-learning-based autism face recognition framework is proposed to identify kids with ASD in the early stages more precisely. Therefore, we have collected face images of children with ASD from the Kaggle data repository, and various machine learning and deep learning classifiers and other transfer-learning-based pre-trained models were applied. We observed that our improved MobileNet-V1 model demonstrates the best…
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