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QUANTIFYING EMOTIONAL STATES BASED ON BODY LANGUAGE DATA USING NON INVASIVE SENSORS

机译:基于非侵入式传感器的基于身体语言数据的情绪状态量化

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摘要

Determining participant engagement is an important issue across a large number of fields, ranging from entertainment to education. Traditionally, feedback from participants is taken after the activity has been completed. Alternately, continuous observation by trained humans is needed. Thus, there is a need for an automated real time solution. In this paper, the authors propose a data mining driven approach that models a participant's engagement, based on body language data acquired in real time using non-invasive sensors. Skeletal position data, that approximates human body motions, is acquired from participants using off the shelf, non-invasive sensors. Thereafter, machine learning techniques are employed to detect body language patterns representing emotions such as delight, interest, boredom, frustration, and confusion. The methodology proposed in this paper enables researchers to predict the participants' engagement levels in real time with high accuracy above 98%. A case study involving human participants enacting eight body language poses, is used to illustrate the effectiveness of the methodology. Finally, this methodology highlights the potential of a real time, automated engagement detection using non-invasive sensors which can ultimately have applications in a large variety of areas such as lectures, gaming and classroom learning.
机译:在从娱乐到教育的众多领域中,确定参与者的参与度是一个重要的问题。传统上,活动完成后会从参与者那里获取反馈。或者,需要由受过训练的人员进行连续观察。因此,需要一种自动化的实时解决方案。在本文中,作者提出了一种基于数据挖掘驱动的方法,该方法基于使用非侵入性传感器实时获取的肢体语言数据对参与者的参与进行建模。使用现成的非侵入式传感器从参与者那里获取与人体运动近似的骨骼位置数据。此后,采用机器学习技术来检测代表情感的肢体语言模式,例如愉悦,兴趣,无聊,沮丧和困惑。本文提出的方法使研究人员能够实时准确地预测参与者的参与度,准确率高达98%以上。通过一项涉及人类参与者制定八种肢体语言姿势的案例研究,来说明该方法的有效性。最后,这种方法强调了使用非侵入式传感器进行实时,实时的参与度检测的潜力,该传感器最终可以广泛应用于各种领域,例如演讲,游戏和教室学习。

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