A survey on movement analysis (hand, eye, body) and facial expressions-based diagnosis autism disorders using microsoft kinect V2

Authors

  • Al-Jubouri AA College of IT, University of Babylon, Hillah, Iraq
  • Ali IH College of IT, University of Babylon, Hillah, Iraq

Keywords:

Autism Spectrum Disorders, Autism, Kinect v2, facial expressions, hand movement analysis, eye movement analysis, body movement analysis

Abstract

Kinect v2 may enhance the clinical practice of autism spectrum disorders (ASD). ASD means disorders of neurodevelopment that lasts a lifetime, which occurs in early childhood and usually associated with unusual movement and gait disturbances. The earlier diagnosis of ASD helps of providing well known of these disorders. The methods which are adopted by experts in diagnosis are expensive, time-consuming, and difficult to replicate, as it is based on manual observation and standard questionnaires to look for certain signs of behavior. This paper, to the best of our knowledge, is a first attempt to collect the previous researches of the Kinect v2 in the disorder's diagnosis. Relevant papers are divided into four groups which are: (1) papers suggest a system based on the analysis of facial expressions, (2) papers suggest a system based on the analysis of hand movement, (3) papers suggest a system based on analysis of eye movement, and (4) papers suggest a system based on analysis of body movement.

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Published

2024-02-26

How to Cite

Al-Jubouri, A. A., & Ali, I. H. (2024). A survey on movement analysis (hand, eye, body) and facial expressions-based diagnosis autism disorders using microsoft kinect V2. COMPUSOFT: An International Journal of Advanced Computer Technology, 9(01), 3566–3577. Retrieved from https://ijact.in/index.php/j/article/view/554

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Review Article

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