基于PPG信号的决策树疲劳检测方法

I. Zaeni, Arya Kusuma Wardhana, Erianto Fanani
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引用次数: 0

摘要

疲劳是一种复杂的心理生理状况,其特征是嗜睡或疲劳、表现不佳和一系列生理变化。决策树可以用于基于受试者的心率数据对疲劳进行分类。为了开始实验,获得了心率信号的数据集。信号已经经过预处理。然后使用通过预处理获得的特征来构建决策模型。发现了四个特征。HF功率、LF功率、归一化HF功率和归一化LF功率是特性。这项研究的准确率为75.94%。本研究的准确度、召回率和F-measure得分分别为0.736、0.736和0.736。
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Fatigue detection using decision tree method based on PPG signal
Fatigue is a complex psychophysiological condition marked by sleepiness or fatigue, poor performance, and a range of physiological changes. A decision tree may be used to categorize weariness based on the subject's heart rate data. To begin the experiment, a dataset of the heart rate signal was obtained. The signal has already undergone preprocessing. The feature obtained through preprocessing is then used to construct the decision model. Four traits were discovered. The HF power, LF power, normalized HF power, and normalized LF power are the characteristics. This research has a 75.94% accuracy rating. The precision, recall, and F-measure scores for this study were 0.736, 0.736, and 0.736, respectively.
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审稿时长
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