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Understanding nonverbal communication cues of human personality traits in human-robot interaction

机译:了解人体机器人互动中人格特征的非言语通信提示

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摘要

With the increasing presence of robots in our daily life, there is a strong need and demand for the strategies to acquire a high quality interaction between robots and users by enabling robots to understand users' mood, intention, and other aspects. During human-human interaction, personality traits have an important influence on human behavior, decision, mood, and many others. Therefore, we propose an efficient computational framework to endow the robot with the capability of understanding the user' s personality traits based on the user' s nonverbal communication cues represented by three visual features including the head motion, gaze, and body motion energy, and three vocal features including voice pitch, voice energy, and mel-frequency cepstral coefficient (MFCC). We used the Pepper robot in this study as a communication robot to interact with each participant by asking questions, and meanwhile, the robot extracts the nonverbal features from each participant' s habitual behavior using its on-board sensors. On the other hand, each participant' s personality traits are evaluated with a questionnaire. We then train the ridge regression and linear support vector machine (SVM) classifiers using the nonverbal features and personality trait labels from a questionnaire and evaluate the performance of the classifiers. We have verified the validity of the proposed models that showed promising binary classification performance on recognizing each of the Big Five personality traits of the participants based on individual differences in nonverbal communication cues.
机译:随着机器人在日常生活中的增加,通过使机器人能够理解用户的情绪,意图等方面,对机器人和用户之间获得高质量互动的策略存在强烈的需求和需求。在人类的互动期间,人格特质对人类行为,决定,情绪和许多人具有重要影响。因此,我们提出了一种有效的计算框架来赋予机器人,以基于由包括头部运动,凝视和身体运动能量的三个视觉特征表示的用户的非语言通信提示,以了解用户的个性特征的能力。三个声音特征,包括语音间距,语音能量和熔体频率患者系数(MFCC)。我们在本研究中使用了Pepper Robot作为通过提出问题与每个参与者互动的通信机器人,并且同时,机器人使用其板载传感器从每个参与者的习惯行为中提取非语言特征。另一方面,每个参与者的个性特征都用调查问卷进行评估。然后,我们使用来自调查问卷的非语言特征和个性特征标签训练山脊回归和线性支持向量机(SVM)分类器,并评估分类器的性能。我们已经验证了拟议模型的有效性,这些模型对于认识到参与者的每个大五个人格特征,基于非语言通信提示的个体差异。

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