首页> 美国卫生研究院文献>Sensors (Basel Switzerland) >An Intra-Subject Approach Based on the Application of HMM to Predict Concentration in Educational Contexts from Nonintrusive Physiological Signals in Real-World Situations
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An Intra-Subject Approach Based on the Application of HMM to Predict Concentration in Educational Contexts from Nonintrusive Physiological Signals in Real-World Situations

机译:基于HMM在实际情况下从非流体生理信号预测教育环境中的浓度的对象内方法

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摘要

Previous research has proven the strong influence of emotions on student engagement and motivation. Therefore, emotion recognition is becoming very relevant in educational scenarios, but there is no standard method for predicting students’ affects. However, physiological signals have been widely used in educational contexts. Some physiological signals have shown a high accuracy in detecting emotions because they reflect spontaneous affect-related information, which is fresh and does not require additional control or interpretation. Most proposed works use measuring equipment for which applicability in real-world scenarios is limited because of its high cost and intrusiveness. To tackle this problem, in this work, we analyse the feasibility of developing low-cost and nonintrusive devices to obtain a high detection accuracy from easy-to-capture signals. By using both inter-subject and intra-subject models, we present an experimental study that aims to explore the potential application of Hidden Markov Models (HMM) to predict the concentration state from 4 commonly used physiological signals, namely heart rate, breath rate, skin conductance and skin temperature. We also study the effect of combining these four signals and analyse their potential use in an educational context in terms of intrusiveness, cost and accuracy. The results show that a high accuracy can be achieved with three of the signals when using HMM-based intra-subject models. However, inter-subject models, which are meant to obtain subject-independent approaches for affect detection, fail at the same task.
机译:以前的研究已经证明了情绪对学生参与和动机的强烈影响。因此,情感认可在教育场景中具有非常相关的,但没有预测学生的影响的标准方法。然而,生理信号已被广泛用于教育背景。一些生理信号在检测情绪中显示出高精度,因为它们反映了自发性影响相关信息,这是新鲜的,并且不需要额外的控制或解释。最拟议的作品使用测量设备,其在现实世界方案中的适用性是有限的,因为其高成本和侵入性。为了解决这个问题,在这项工作中,我们分析了开发低成本和非流体设备的可行性,从易于捕获的信号获得高检测精度。通过使用介绍间和主题帧内模型,我们展示了一个实验研究,旨在探讨隐马尔可夫模型(HMM)的潜在应用,以预测来自4个常用生理信号的浓度状态,即心率,呼吸率,皮肤电导和皮肤温度。我们还研究了组合这四个信号的效果,并在侵入性,成本和准确性方面分析其在教育环境中的潜在用途。结果表明,在使用基于HMM的帧内主题模型时,可以使用三个信号实现高精度。但是,介绍互相型号,该模型是为了获得对象的影响检测方法,在同一任务中失败。

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