首页 /研究 /Measuring motor actions and psychophysiology for task difficulty estimation in human-robot interaction
HRI

Measuring motor actions and psychophysiology for task difficulty estimation in human-robot interaction

Domen Novak, Matjaž Mihelj, Jaka Ziherl, Andrej Olenšek, Marko Munih

发表年份
2010
引用次数
9

摘要

In this paper, we describe a method for estimating task difficulty in human-robot interaction using a combination of motor actions and psychophysiology. A number of variables are calculated from kinematics, dynamics, heart rate, skin conductance, respiration and skin temperature. Discriminant analysis of the variables is used to determine whether the user finds the task too easy or too hard. The discriminant function is recursively updated with Kalman filtering in order to better adapt to the current user. The method was tested offline in a task with 20 subjects. In cross-validation, nonadaptive discriminant analysis yielded a classification accuracy of 80.2% while adaptive discriminant analysis yielded a classification accuracy of 84.3%.

关键词

Linear discriminant analysisTask (project management)Artificial intelligenceDiscriminantComputer scienceRobotPsychophysiologyKinematicsDiscriminant function analysisKalman filter

相关论文

查看 HRI 分类全部论文