Automated Pain Detection from Facial Expressions using FACS: A Review
Zhanli Chen, Rashid Ansari, Diana Wilkie

TL;DR
This review paper discusses the progress and challenges in developing automated pain detection systems based on facial expressions and FACS, highlighting recent deep learning advances and clinical considerations.
Contribution
It provides a comprehensive overview of the evolution of automated pain detection methods, emphasizing framework similarities, system design, and available databases.
Findings
Deep learning has advanced automated pain detection.
Few studies have successfully integrated FACS-based pain detection into clinical practice.
Key databases support ongoing research in automated facial expression analysis.
Abstract
Facial pain expression is an important modality for assessing pain, especially when the patient's verbal ability to communicate is impaired. The facial muscle-based action units (AUs), which are defined by the Facial Action Coding System (FACS), have been widely studied and are highly reliable as a method for detecting facial expressions (FE) including valid detection of pain. Unfortunately, FACS coding by humans is a very time-consuming task that makes its clinical use prohibitive. Significant progress on automated facial expression recognition (AFER) has led to its numerous successful applications in FACS-based affective computing problems. However, only a handful of studies have been reported on automated pain detection (APD), and its application in clinical settings is still far from a reality. In this paper, we review the progress in research that has contributed to automated pain…
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Taxonomy
TopicsEmotion and Mood Recognition · EEG and Brain-Computer Interfaces · Vagus Nerve Stimulation Research
