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Optimization of IoT-Based Motion Intelligence Monitoring System

机译:基于物联网运动智能监控系统的优化

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We design and implement an intelligent IoT-based motion monitoring system to realize the monitoring of three important parameters, namely, the type of movement, the number of movements, and the period of movement in physical activities, and optimize the system to support the simultaneous use by multiple users. Considering the motion monitoring scenario for smart fit, the framework of an IoT-based motion monitoring system is proposed. The framework contains components such as active acquisition nodes, wireless access points, data processing servers, and terminals. In terms of algorithm optimization, research related to active pattern recognition and periodic calculation methods is conducted. For active pattern recognition, two types of classification algorithms with different complexity are proposed based on Support Vector Machine (SVM) and deep neural networks, respectively, to adapt to scenarios with different computational capabilities. For period calculation, a method based on over-zero detection and wavelet transform is proposed to count the number of actions and calculate the period of each action. In 100 times action cycle calculation experiments, the count statistic calculation method achieves 100% calculation accuracy and the active cycle calculation results are close to the real value, which proves the effectiveness of the cycle calculation method. The system provides a multiuser-oriented communication method and realizes accurate and reliable human movement monitoring, which has a wide application prospect in the fields of physical education and rehabilitation training.
机译:我们设计和实现一个智能的基于物联网运动监测系统来实现的三个重要参数,即监测,运动型,运动次数和体育活动运动时期,优化系统,以支持同时由多个用户使用。考虑到运动监控场景的智能配合,基于物联网运动监测系统的框架建议。该框架包含组分如活性采集节点,无线接入点,数据处理服务器和终端。在算法优化方面,关系到积极的模式识别和周期性的计算方法研究进行。对于主动模式识别,两种不同的复杂的分类算法都是基于支持向量机(SVM)和深层神经网络,分别提出,以适应不同的计算能力的情况。对于周期计算中,一种方法在基于过零检测和小波变换,提出了计数动作的次数,并计算每个动作的周期。在100个循环动作计算实验,计数统计量计算方法实现了100%的计算精度和有源周期的计算结果是接近真实值,这证明了该周期计算方法的有效性。该系统提供了一个面向多用户通信方法,实现了准确,可靠的人体运动监测,这在体育教育和康复训练等领域有着广泛的应用前景。

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