Robots are expected to be pervasive in the society in
a not too distant future where they will work extensively
as assistants of humans in various activities. With this in
view, a novel affect-sensitive architecture for human-robot cooperation is presented
in this paper where the robot is expected to recognize
human psychological states. As a demonstration, an online heart rate
variability analysis to infer the mental stress of a human
engaged in a task is presented. This technique involves real-time
heart rate monitoring, signal processing using both Fourier Transforrn and
Wavelet Transform, and inferring the stress condition based on the
level of activation of the sympathetic and parasympathetic nervous systems
using fuzzy logic. Results from human subject trials are presented
to validate the presented methodology. This stress detection technique is
expected to be useful in the future human-robot cooperation activities,
where the robot will recognize human stress and respond appropriately.