Py-Feat: Python Facial Expression Analysis Toolbox
This work addresses the problem of limited accessibility to facial expression analysis tools for social science researchers, providing a user-friendly solution to facilitate broader use in human behavior research.
The authors tackled the difficulty of applying facial expression analysis in social sciences by introducing Py-Feat, an open-source Python toolbox that simplifies detection, preprocessing, analysis, and visualization of facial expression data for domain experts and end users.
Studying facial expressions is a notoriously difficult endeavor. Recent advances in the field of affective computing have yielded impressive progress in automatically detecting facial expressions from pictures and videos. However, much of this work has yet to be widely disseminated in social science domains such as psychology. Current state of the art models require considerable domain expertise that is not traditionally incorporated into social science training programs. Furthermore, there is a notable absence of user-friendly and open-source software that provides a comprehensive set of tools and functions that support facial expression research. In this paper, we introduce Py-Feat, an open-source Python toolbox that provides support for detecting, preprocessing, analyzing, and visualizing facial expression data. Py-Feat makes it easy for domain experts to disseminate and benchmark computer vision models and also for end users to quickly process, analyze, and visualize face expression data. We hope this platform will facilitate increased use of facial expression data in human behavior research.