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Facial action unit detection with local key facial sub-region based multi-label classification for micro-expression analysis

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Facial_action_unit_detection_with_local.pdf (2.183Mb)
Date
24/10/2021
Author
Zhang, Liangfei
Arandjelovic, Ognjen
Hong, Xiaopeng
Keywords
Facial Action Unit detection
Micro-expression analysis
Micro-movements
QA76 Computer software
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Abstract
Micro-expressions describe unconscious facial movements which reflect a person's psychological state even when there is an attempt to conceal it. Often used in psychological and forensic applications, their manual recognition requires professional training and is time consuming. Therefore, achieving automatic recognition by means of computer vision would confer enormous benefits. Facial Action Unit (AU) is a coding of facial muscular complexes which can be independently activated. Each AU represents a specific facial action. In the present paper, we propose a method for the challenging task that is the detection of activated AUs when the micro-expression occurs, which is crucial in the inference of emotion from a video capturing a micro-expression. This specific problem is made all the more difficult in the light of limited amounts of data available and the subtlety of micro-movements. We propose a segmentation method for key facial sub-regions based on the location of AUs and facial landmarks, which extracts 11 facial key regions from each sequence of micro-expression images. AUs are assigned to different local areas for multi-label classification. Considering that there is little prior work on the specific task of detection of AU activation in the existing literature on micro-expression analysis, for the evaluation of the proposed method we design an AU independent cross-validation method and adopt Unweighted Average Recall (UAR), Unweighted F1-score (UF1), and their average as the scoring criteria. Evaluated using the established standards in the field and compared with previous work, our approach is shown to exhibit state-of-the-art performance.
Citation
Zhang , L , Arandjelovic , O & Hong , X 2021 , Facial action unit detection with local key facial sub-region based multi-label classification for micro-expression analysis . in FME'21: Proceedings of the 1st Workshop on Facial Micro-expression : Advanced Techniques for Facial Expressions Generation and Spotting . ACM , New York , pp. 11-18 , Facial Micro-Expression (FME) Workshop and Challenge 2021 , Chengdu , China , 20/10/21 . https://doi.org/10.1145/3476100.3484462
 
workshop
 
Publication
FME'21: Proceedings of the 1st Workshop on Facial Micro-expression
DOI
https://doi.org/10.1145/3476100.3484462
Type
Conference item
Rights
Copyright © 2021 Association for Computing Machinery. This work has been made available online in accordance with publisher policies or with permission. Permission for further reuse of this content should be sought from the publisher or the rights holder. This is the author created accepted manuscript following peer review and may differ slightly from the final published version. The final published version of this work is available at https://doi.org/10.1145/3476100.3484462.
Description
This work is partially funded by National Key Research and Development Project of China under Grant 2019YFB1312000, and by National Natural Science Foundation of China under Grant No. 62076195. L. Zhang is funded by the China Scholarship Council – University of St Andrews Scholarship (No.201908060250).
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  • University of St Andrews Research
URI
http://hdl.handle.net/10023/24308

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