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Activity Analysis and Detection of Repetitive Motion in Autistic Patients

机译:自闭症患者的活动分析和重复运动检测

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There is no doubt today that autism is both neurodevelopment and behavioural - a multifactorial disease characterized by impaired social skills and lack of efficient communication. In order to support more efficient development and improve communication, many directions in science have been and still are on clinical trials. We compared repetitive motion patterns with patterns characteristic of normal everyday activities and isolated the key elements of each that allow distinguishing between the two motion patterns. The Principal Component Analysis technique was used to reduce the dimensionality of the motion data collected. A kNN classifier was also used to determine the two classes of motion apart with 100% sensitivity and specificity. We present here a uniquely designed alarm system that can help with autistic children's difficulties on a real-time basis. The uniqueness of the system is that it can be extended or applied to other situations of even non-autistic children that suffer some health disturbances or particular situations that need a specific assistance. Beside the system's design description and methodological details, further work on improving it to the higher level is proposed.
机译:今天,毫无疑问,自闭症既是神经发育又是行为行为-一种以社交能力受损和缺乏有效沟通为特征的多因素疾病。为了支持更有效的开发和改善交流,科学方面的许多方向已经并且仍在临床试验中。我们将重复运动模式与正常日常活动的特征模式进行了比较,并隔离了每个运动模式的关键元素,从而可以区分这两种运动模式。主成分分析技术用于减少所收集运动数据的维数。 kNN分类器还用于确定两类运动,灵敏度和特异性均为100%。我们在这里提出了一种设计独特的警报系统,可以实时帮助自闭症儿童的困难。该系统的独特之处在于它可以扩展或应用于其他情况,甚至是患有某些健康问题的非自闭症儿童或需要特殊帮助的特殊情况。除了系统的设计说明和方法上的细节外,还提出了进一步改进系统的工作。

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