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Effective recognition of facial micro-expressions with video motion magnification

journal contribution
posted on 2024-11-03, 13:03 authored by Yandan Wang, John See, Yee-Hui Oh, Raphael Phan, Yogachandran Rahulamathavan, Huo Chong LingHuo Chong Ling, Su-Wei Tan, Xujie Li
Facial expression recognition has been intensively studied for decades, notably by the psychology community and more recently the pattern recognition community. What is more challenging, and the subject of more recent research, is the problem of recognizing subtle emotions exhibited by so-called micro-expressions. Recognizing a micro-expression is substantially more challenging than conventional expression recognition because these micro-expressions are only temporally exhibited in a fraction of a second and involve minute spatial changes. Until now, work in this field is at a nascent stage, with only a few existing micro-expression databases and methods. In this article, we propose a new micro-expression recognition approach based on the Eulerian motion magnification technique, which could reveal the hidden information and accentuate the subtle changes in micro-expression motion. Validation of our proposal was done on the recently proposed CASME II dataset in comparison with baseline and state-of-the-art methods. We achieve a good recognition accuracy of up to 75.30 % by using leave-one-out cross validation evaluation protocol. Extensive experiments on various factors at play further demonstrate the effectiveness of our proposed approach.

History

Journal

Multimedia Tools and Applications

Volume

76

Issue

20

Start page

21665

End page

21690

Total pages

26

Publisher

Springer New York LLC

Place published

United States

Language

English

Copyright

© Springer Science+Business Media New York 2016

Former Identifier

2006127048

Esploro creation date

2023-11-30

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