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Measuring the Variabilities in the Body Postures of the Children for Early Detection of Autism Spectrum Disorder (ASD)

机译:测量儿童的体位变异以早期发现自闭症谱系障碍(ASD)

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Presently, the number of children with autism appears to be growing at disturbing rate. Unfortunately, the awareness of early sign of Autism Spectrum Disorder (ASD) is still insufficiently provided to the public. Arm flapping is a good example of a stereotypical behavior of ASD early sign. Typically, a standard Repetitive Behavior Scale-Revised (RBSR) - set of questionnaire -used by clinicians for ASD diagnosis usually involved multiple and long sessions that apparendy would delay and may have nonconformity. Thus, we aim to propose a computational framework to semi-automate the diagnosis process. We used human action recognition (HAR) algorithm. HAR involved in human body detection and the skeleton representation to show the arm asymmetrical in arm flapping movement which indicates the possibility of ASD signs by extracting the body pose into stickman model. The proposed framework has been tested against the video clips of children performing arm flapping behavior taken from public dataset. The outcome of this study is expected to detect early sign of ASD based on asymmetry measurement of arm flapping behavior.
机译:目前,自闭症儿童的数量似乎正在以令人不安的速度增长。不幸的是,对自闭症谱系障碍(ASD)的早期迹象的认识仍然不足以向公众提供。手臂拍打是ASD早期定型行为的一个很好的例子。通常,临床医生用于ASD诊断的标准重复性行为量表(RBSR)-问卷集通常涉及多个和很长的疗程,但听证会会延误甚至不合格。因此,我们旨在提出一种计算框架以使诊断过程半自动化。我们使用了人类动作识别(HAR)算法。 HAR参与人体检测,并通过骨骼表示来显示手臂拍打运动中的手臂不对称,这表明通过将人体姿势提取到Stickman模型中可以表明ASD征兆的可能性。拟议的框架已针对从公共数据集中获取的执行手臂拍打行为的儿童的视频剪辑进行了测试。这项研究的结果有望基于手臂拍打行为的不对称测量来检测ASD的早期征兆。

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