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Evaluation of heart rate variability by using wavelet transform and a recurrent neural network

机译:利用小波变换和递归神经网络评估心率变异性

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The purpose of this paper is to evaluate the physical and mental stress based on the physiological index, and a new evaluation method of heart rate variability is proposed. This method combines the wavelet transform with a recurrent neural network. The features of the proposed method are as follows: 1. The wavelet transform is utilized for the feature extraction so that the local change of heart rate variability in the time-frequency domain can be extracted. 2. In order to learn and evaluate the different patterns of heart rate variability caused by individual variations, body conditions, circadian rhythms and so on, a new recurrent neural network which incorporates a hidden Markov model is used. In the experiments, a mental workload was given to five subjects, and the subjective rating scores of their mental stress were evaluated using heart rate variability. It was confirmed from the experiments that the proposed method could achieve high learning/evaluating performances.
机译:本文旨在基于生理指标评估身心压力,并提出了一种新的心率变异性评估方法。该方法将小波变换与递归神经网络相结合。该方法的特点如下:1.利用小波变换进行特征提取,从而可以提取时频域心率变异性的局部变化。 2.为了学习和评估由个体差异,身体状况,昼夜节律等导致的心率变异性的不同模式,使用了一个新的递归神经网络,该网络结合了隐马尔可夫模型。在实验中,给五名受试者施加了精神负荷,并使用心率变异性评估了他们的精神压力的主观评分。实验证明,该方法可以取得较高的学习/评价性能。

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