Manual methods of coding
facial behavior are labor intensive, semi-quantitative, and difficult to standardize
across laboratories or over time.
To capture the subtlety of human emotion and non-verbal communication, our interdisciplinary
team of computer scientists and psychologists have been developing Automated
Face Analysis System across its generations as shown below.
| Generation |
Condition |
Method | Target |
|
| Features | Classifier | |||
| Frontal view
Limited head motion Assumed planar motion |
Dense flow Feature points Edge power |
Hidden Markov
Model Discriminant Classifier |
AUs occurring alone |
|
| Frontal
view Limited head motion Assumed planar motion |
Feature points Gaussian mixtures Edge power Gabor coefficients |
Neural network | AUs occurring alone and in combinations |
|
| Target
facial component is visible |
|
AUs occurring in spontaneous behavior |
||
Continuing system development is part of a larger goal of developing computer
systems that can detect human activity, recognize the people involved, understand
their behavior, and respond appropriately.