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The Prediction and Error Correction of Physiological Sign During Exercise Using Bayesian Combined Predictor and Naive Bayesian Classifier

机译:贝叶斯组合预测器和朴素贝叶斯分类器对运动过程中生理信号的预测和误差校正

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摘要

Physiological signs monitored by wearable devices can reflect human body burden and exercise intensity. Due to the risk, avoidance of excessive intensity of exercise, energy-saving requirement, and other factors, it is of great necessity to predict physiological sign values for the monitoring of the human body during exercise. Most available works have used a single model for prediction of physiological signs which has a bad performance with a greater prediction error. In this light, we formalize a multistep prediction scheme for physiological signs during exercise using the Bayesian combined predictor and propose an error correction mechanism to correct the accumulated error generated in the prediction process using a naive Bayesian model. Finally, we evaluate the performance of the proposed scheme using actual monitored data of several exercisers. The simulation results show that our scheme outperforms all available schemes on the performance of prediction error.
机译:可穿戴设备监控的生理信号可以反映人体负担和运动强度。由于存在风险,避免过度的运动强度,节能需求和其他因素,因此非常有必要预测运动过程中监测人体的生理信号值。大多数可用的工作都使用单个模型来预测生理征兆,该模型的性能较差,但预测误差较大。因此,我们使用贝叶斯组合预测器对运动过程中生理征兆的多步预测方案进行形式化,并提出了一种误差校正机制,以使用朴素贝叶斯模型校正在预测过程中产生的累积误差。最后,我们使用几个锻炼者的实际监测数据评估所提出方案的性能。仿真结果表明,我们的方案在预测误差性能上优于所有可用方案。

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