Title of article :
COMPUTER VISION TECHNIQUES FOR AUTISM SYMPTOMS DETECTION AND RECOGNITION: A SURVEY
Author/Authors :
sadek, esraa t. ain shams university - faculty of computer and information sciences - department of computer systems, Cairo, Egypt , seada, noha a. ain shams university - faculty of computer and information sciences - department of computer systems, Cairo, Egypt , ghoniemy, said ain shams university - faculty of computer and information sciences - department of computer systems, Cairo, Egypt
Abstract :
Autism spectrum disorder (ASD) is a world-threatening mental developing disorders that recently appeared widely, due to its diagnosis complexity as well as lack of evidence of its real causes. Many researchers have afforded great effort to precisely identify this syndrome and its symptoms. This survey provides a comprehensive study of autism spectrum disorder, its types, symptoms, prevalence, and developments in its diagnosing. Six categories for autism exposure and identification are currently investigated; clinical monitoring, genetics and blood analysis, Functional magnetic resonance imaging (fMRI), Electroencephalography (EEG) based investigation, wearable sensors and finally computer vision-based techniques. Computational technologies, especially computer-vision, machine learning and neural networks techniques have added great advances in detecting autism and these techniques are comprehensively reviewed in this paper. Also, medical assisting computer vision-based framework is proposed to detect observable autism symptoms. The proposed framework utilises recent and efficient techniques that can be used to produce accurate diagnosing results.
Keywords :
ASD , Autism spectrum disorder , autistic symptoms detection , autism signs detection repetitive motor behaviors , autistic self , stimulatory or stereotypy behaviors , Activity Recognition and Classification , Computer Vision
Journal title :
International Journal of Intelligent Computing and Information Sciences
Journal title :
International Journal of Intelligent Computing and Information Sciences