首页> 外文会议>Intelligent Robots and Systems, 2005. (IROS 2005). 2005 IEEE/RSJ International Conference on >An empirical study of machine learning techniques for affect recognition in human-robot interaction
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An empirical study of machine learning techniques for affect recognition in human-robot interaction

机译:机器学习技术对人机交互影响识别的实证研究

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Given the importance of implicit communication in human interactions, it would be valuable to have this capability in robotic systems wherein a robot can detect the motivations and emotions of the person it is working with. Recognizing affective states from physiological cues is an effective way of implementing implicit human-robot interaction. Several machine learning techniques have been successfully employed in affect-recognition to predict the affective state of an individual given a set of physiological features. However, a systematic comparison of the strengths and weaknesses of these methods has not yet been done. In this paper we present a comparative study of four machine learning methods - k-nearest neighbor, regression tree, Bayesian network and support vector machine as applied to the domain of affect recognition using physiological signals. The results showed that support vector machine gave the best classification accuracy even though all the methods performed competitively. Regression tree gave the next best classification accuracy and was the most space and time efficient.
机译:考虑到隐式通信在人机交互中的重要性,在机器人系统中拥有此功能非常有价值,在该系统中,机器人可以检测与之共事的人的动机和情绪。从生理线索识别情感状态是实现隐式人机交互的有效方法。几种机器学习技术已成功用于情感识别中,以预测给定一组生理特征的个人的情感状态。但是,尚未对这些方法的优缺点进行系统的比较。在本文中,我们对四种机器学习方法(k近邻,回归树,贝叶斯网络和支持向量机)进行了比较研究,这些方法应用于使用生理信号进行的情感识别领域。结果表明,即使所有方法都具有竞争优势,支持向量机仍能提供最佳的分类精度。回归树的分类准确率次之,而且空间和时间效率最高。

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