» Articles » PMID: 22736651

Meta-Analysis of the First Facial Expression Recognition Challenge

Overview
Date 2012 Jun 28
PMID 22736651
Citations 21
Authors
Affiliations
Soon will be listed here.
Abstract

Automatic facial expression recognition has been an active topic in computer science for over two decades, in particular facial action coding system action unit (AU) detection and classification of a number of discrete emotion states from facial expressive imagery. Standardization and comparability have received some attention; for instance, there exist a number of commonly used facial expression databases. However, lack of a commonly accepted evaluation protocol and, typically, lack of sufficient details needed to reproduce the reported individual results make it difficult to compare systems. This, in turn, hinders the progress of the field. A periodical challenge in facial expression recognition would allow such a comparison on a level playing field. It would provide an insight on how far the field has come and would allow researchers to identify new goals, challenges, and targets. This paper presents a meta-analysis of the first such challenge in automatic recognition of facial expressions, held during the IEEE conference on Face and Gesture Recognition 2011. It details the challenge data, evaluation protocol, and the results attained in two subchallenges: AU detection and classification of facial expression imagery in terms of a number of discrete emotion categories. We also summarize the lessons learned and reflect on the future of the field of facial expression recognition in general and on possible future challenges in particular.

Citing Articles

A Non-Invasive Approach for Facial Action Unit Extraction and Its Application in Pain Detection.

Bouazizi M, Feghoul K, Wang S, Yin Y, Ohtsuki T Bioengineering (Basel). 2025; 12(2).

PMID: 40001714 PMC: 11851526. DOI: 10.3390/bioengineering12020195.


Development of a Universal Validation Protocol and an Open-Source Database for Multi-Contextual Facial Expression Recognition.

La Monica L, Cenerini C, Vollero L, Pennazza G, Santonico M, Keller F Sensors (Basel). 2023; 23(20).

PMID: 37896470 PMC: 10611000. DOI: 10.3390/s23208376.


Characteristics of healthy Japanese young adults with respect to recognition of facial expressions: a preliminary study.

Hama T, Koeda M BMC Psychol. 2023; 11(1):237.

PMID: 37592360 PMC: 10436396. DOI: 10.1186/s40359-023-01281-5.


Training machine learning algorithms for automatic facial coding: The role of emotional facial expressions' prototypicality.

Budenbender B, Hofling T, Gerdes A, Alpers G PLoS One. 2023; 18(2):e0281309.

PMID: 36763694 PMC: 9916590. DOI: 10.1371/journal.pone.0281309.


Similarities and disparities between visual analysis and high-resolution electromyography of facial expressions.

Gat L, Gerston A, Shikun L, Inzelberg L, Hanein Y PLoS One. 2022; 17(2):e0262286.

PMID: 35192638 PMC: 8863227. DOI: 10.1371/journal.pone.0262286.