Affective Facial Expression Processing via Simulation: A Probabilistic Model
This work addresses emotion detection for intelligent agents and robots in social environments, but it appears incremental as it builds on existing theories with preliminary findings.
The paper tackled the problem of understanding mental states from facial expressions by proposing a computational model based on Simulation Theory and Mirror-Neuron Systems, achieving promising preliminary results.
Understanding the mental state of other people is an important skill for intelligent agents and robots to operate within social environments. However, the mental processes involved in `mind-reading' are complex. One explanation of such processes is Simulation Theory - it is supported by a large body of neuropsychological research. Yet, determining the best computational model or theory to use in simulation-style emotion detection, is far from being understood. In this work, we use Simulation Theory and neuroscience findings on Mirror-Neuron Systems as the basis for a novel computational model, as a way to handle affective facial expressions. The model is based on a probabilistic mapping of observations from multiple identities onto a single fixed identity (`internal transcoding of external stimuli'), and then onto a latent space (`phenomenological response'). Together with the proposed architecture we present some promising preliminary results