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A novel hidden Markov model-based adaptive dynamic time warping (HMDTW) gait analysis for identifying physically challenged persons

机译:基于隐马尔可夫模型的自适应动态时间翘曲(HMDTW)步态分析,用于识别身体挑战人员

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摘要

Internet of things plays vital role in real-time applications, and the research thrust towards implementing IoT in gait analysis increases day by day in order to obtain efficient gait recognition mechanism. IoT in gait analysis is used to monitor and communicate the observing gait, and also to transfer data to others is the current trend which is available. This research work provides an efficient gait recognition system with IoT using dynamic time wrapping and naive bays classifier as combination to obtain hybrid model. The objective of this research is identifying the patients or persons with walking disabilities in a crowded area and providing suitable alerts to them by monitoring the walking styles. So that the possibility of getting injured is avoided and the information related to the persons also alerted through IoT module. Also, IoT module is used to collect information from the sensors used in persons accessories and other places. Twenty-five males and 10 females are subjected to examine the proposed model in different locations and achieved the overall accuracy percentage of 92.15%.
机译:事物互联网在实时应用中起着至关重要的作用,并且在步态分析中实施物联网的研究推力在一天中增加,以获得有效的步态识别机制。步态分析中的物联网用于监控和传达观察步态,并且还将数据传输到其他人是现有的当前趋势。该研究工作提供了一种高效的步态识别系统,其使用动态时间包裹和天真托架分类器作为组合获取混合模型。本研究的目的是在拥挤的地区识别患者或患有行走残疾的人,并通过监控行走方式为他们提供适当的警报。因此,避免了受伤的可能性,并且与人员有关的信息也通过IOT模块提醒。此外,IOT模块用于从人员配件和其他地方的传感器中收集信息。对25名男性和10名女性进行了不同地点的拟议模型,并达到了92.15%的总体准确性百分比。

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