TL;DR
This paper introduces Facial Basis, an unsupervised, data-driven facial coding system that overcomes FACS limitations and improves autism prediction accuracy from facial movements in videos.
Contribution
It presents the first unsupervised, additive facial movement coding system that reconstructs all observable movements, surpassing traditional FACS-based methods.
Findings
Facial Basis outperforms standard AU detectors in autism diagnosis tasks.
The method reconstructs comprehensive facial movements without manual annotation.
Open source implementation provided at github.com/sariyanidi/FacialBasis.
Abstract
The Facial Action Coding System (FACS) has been used by numerous studies to investigate the links between facial behavior and mental health. The laborious and costly process of FACS coding has motivated the development of machine learning frameworks for Action Unit (AU) detection. Despite intense efforts spanning three decades, the detection accuracy for many AUs is considered to be below the threshold needed for behavioral research. Also, many AUs are excluded altogether, making it impossible to fulfill the ultimate goal of FACS-the representation of any facial expression in its entirety. This paper considers an alternative approach. Instead of creating automated tools that mimic FACS experts, we propose to use a new coding system that mimics the key properties of FACS. Specifically, we construct a data-driven coding system called the Facial Basis, which contains units that correspond…
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