Local Temporal Pattern and Data Augmentation for Spotting Micro-Expressions

被引:31
作者
Li, Jingting [1 ]
Soladie, Catherine [1 ]
Seguier, Renaud [1 ]
机构
[1] IETR, FAST Res Grp, CentraleSupelec, CNRS,UMR 6164, F-35000 Rennes, France
关键词
Feature extraction; Databases; Training; Machine learning; Machine learning algorithms; Magnetic heads; Data mining; Micro-expression; spotting; local temporal pattern; data augmentation; Hammerstein model; RECOGNITION;
D O I
10.1109/TAFFC.2020.3023821
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Micro-expressions (MEs) are very important nonverbal communication clues. However, due to their local and short nature, spotting them is challenging. In this article, we address this problem by using a dedicated local and temporal pattern (LTP) of facial movement. This pattern has a specific shape (an S-pattern) when MEs are displayed. Thus, by using a classic classification algorithm (SVM), MEs can be distinguished from other facial movements. We also propose a global final fusion analysis covering the whole face to improve the distinction between ME (local) and head (global) movements. However, the learning of S-patterns is limited by the small number of ME databases and the low volume of ME samples. Hammerstein models (HMs) are known to effectively approximate muscle movements. By approximating each S-pattern with an HM, we can both filter out outliers and generate new similar S-patterns. In this way, we augment the dataset for S-pattern training and improve the ability to differentiate MEs from other movements. The spotting results, performed in the CASMEI and CASMEII databases, show that our proposed LTP outperforms the most popular spotting method in terms of the F1-score. Adding a fusion process and data augmentation improves the spotting performance even further.
引用
收藏
页码:811 / 822
页数:12
相关论文
共 42 条
[31]   A Survey of Automatic Facial Micro-Expression Analysis: Databases, Methods, and Challenges [J].
Oh, Yee-Hui ;
See, John ;
Le Ngo, Anh Cat ;
Phan, Raphael C. -W. ;
Baskaran, Vishnu M. .
FRONTIERS IN PSYCHOLOGY, 2018, 9
[32]   Spatiotemporal Integration of Optical Flow Vectors for Micro-expression Detection [J].
Patel, Devangini ;
Zhao, Guoying ;
Pietikainen, Matti .
ADVANCED CONCEPTS FOR INTELLIGENT VISION SYSTEMS, ACIVS 2015, 2015, 9386 :369-380
[33]   Presidential speechmaking style: Emotional response to micro-expressions of facial affect [J].
Stewart, Patrick A. ;
Waller, Bridget M. ;
Schubert, James N. .
MOTIVATION AND EMOTION, 2009, 33 (02) :125-135
[34]  
Stoiber N., 2010, THESIS U RENNES 1 RE
[35]   Sliding Window Based Micro-expression Spotting: A Benchmark [J].
Thuong-Khanh Tran ;
Hong, Xiaopeng ;
Zhao, Guoying .
ADVANCED CONCEPTS FOR INTELLIGENT VISION SYSTEMS (ACIVS 2017), 2017, 10617 :542-553
[36]   A Main Directional Maximal Difference Analysis for Spotting Micro-expressions [J].
Wang, Su-Jing ;
Wu, Shuhang ;
Fu, Xiaolan .
COMPUTER VISION - ACCV 2016 WORKSHOPS, PT II, 2017, 10117 :449-461
[37]   A main directional maximal difference analysis for spotting facial movements from long-term videos [J].
Wang, Su-Jing ;
Wu, Shuhang ;
Qian, Xingsheng ;
Li, Jingxiu ;
Fu, Xiaolan .
NEUROCOMPUTING, 2017, 230 :382-389
[38]   Spontaneous micro-expression spotting via geometric deformation modeling [J].
Xia, Zhaoqiang ;
Feng, Xiaoyi ;
Peng, Jinye ;
Peng, Xianlin ;
Zhao, Guoying .
COMPUTER VISION AND IMAGE UNDERSTANDING, 2016, 147 :87-94
[39]   Supervised Descent Method and its Applications to Face Alignment [J].
Xiong, Xuehan ;
De la Torre, Fernando .
2013 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2013, :532-539
[40]  
Yan WJ, 2013, IEEE INT CONF AUTOMA