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Kinect sensor-based interaction monitoring system using the BLSTM neural network in healthcare

机译:基于BLSTM神经网络的Kinect基于传感器的交互监控系统

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Remote monitoring of patients is considered as one of the reliable alternatives to healthcare solutions for elderly and/or chronically ill patients. Further, monitoring interaction with people plays an important role in diagnosis and in managing patients that are suffering from mental illnesses, such as depression and autism spectrum disorders (ASD). In this paper, we propose the Kinect sensor-based interaction monitoring system between two persons using the Bidirectional long short-term memory neural network (BLSTM-NN). Such model can be adopted for the rehabilitation of people (who may be suffering from ASD and other psychological disorders) by analyzing their activities. Medical professionals and caregivers for diagnosing and remotely monitoring the patients suffering from such psychological disorders can use the system. In our study, ten volunteers were involved to create five interactive groups to perform continuous activities, where the Kinect sensor was used to record data. A set of continuous activities was created using random combinations of 24 isolated activities. 3D skeleton of each user was detected and tracked using the Kinect and modeled using BLSTM-NN. We have used a lexicon by analyzing the constraints while performing continuous activities to improve the performance of the system. We have achieved the maximum accuracy of 70.72%. Our results outperformed the previously reported results and therefore the proposed system can further be used in developing internet of things (IoT) Kinect sensor-based healthcare application.
机译:对老年和/或慢性病患者,对患者的远程监控被视为医疗解决方案的可靠替代方案之一。此外,监视与人的互动在诊断和管理患有精神疾病(例如抑郁症和自闭症谱系障碍(ASD))的患者中起着重要作用。在本文中,我们提出了使用双向长短期记忆神经网络(BLSTM-NN)的基于Kinect传感器的两个人之间的交互监视系统。通过分析人们的活动,可以将这种模型用于康复(可能患有ASD和其他心理疾病的人)。诊断和远程监控患有此类心理疾病的患者的医疗专业人员和护理人员可以使用该系统。在我们的研究中,十名志愿者参与创建了五个互动小组,以进行连续的活动,其中使用Kinect传感器记录数据。使用24个独立活动的随机组合创建了一组连续活动。使用Kinect检测并跟踪每个用户的3D骨骼,并使用BLSTM-NN进行建模。我们通过分析约束条件来执行连续活动以提高系统性能时使用了词典。我们已经达到了70.72%的最高准确度。我们的结果优于先前报告的结果,因此,建议的系统可以进一步用于开发基于物联网(IoT)Kinect传感器的医疗保健应用程序。

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