Learning inter-class optical flow difference using generative adversarial networks for facial expression recognition

被引:0
作者
Wenping Guo
Xiaoming Zhao
Shiqing Zhang
Xianzhang Pan
机构
[1] Institute of Intelligent Information Processing,
[2] Taizhou University,undefined
[3] Taizhou Central Hospital (Taizhou University Hospital),undefined
[4] Taizhou University,undefined
来源
Multimedia Tools and Applications | 2023年 / 82卷
关键词
Facial expression recognition; Generative adversarial networks; Convolutional neural networks; Optical flow; Inter-class;
D O I
暂无
中图分类号
学科分类号
摘要
Facial expression recognition is a fine-grained task because different emotions have subtle facial movements. This paper proposes to learn inter-class optical flow difference using generative adversarial networks (GANs) for facial expression recognition. Initially, the proposed method employs a GAN to produce inter-class optical flow images from the difference between the static fully expressive samples and neutral expression samples. Such inter-class optical flow difference is used to highlight the displacement of facial parts between the neutral facial images and fully expressive facial images, which can avoid the disadvantage that the optical flow change between adjacent frames of the same video expression image is not obvious. Then, the proposed method designs four-channel convolutional neural networks (CNNs) to learn high-level optical flow features from the produced inter-class optical flow images, and high-level static appearance features from the fully expressive facial images, respectively. Finally, a decision-level fusion strategy is adopted to implement facial expression classification. The proposed method is validated on two public facial expression databases, BAUM_1a, SAMM and AFEW5.0, demonstrating its promising performance.
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收藏
页码:10099 / 10116
页数:17
相关论文
共 107 条
  • [1] Breve B(2022)Enhancing spatial perception through sound: mapping human movements into MIDI Multim Tools Appl 81 73-94
  • [2] Cirillo S(2012)Perceptual, categorical, and affective processing of ambiguous smiling facial expressions Cognition 125 373-393
  • [3] Cuofano M(2018)Deep peak-neutral difference feature for facial expression recognition Multim Tools Appl 2018 29871-29887
  • [4] Desiato D(2020)The facial action coding system for characterization of human affective response to consumer product-based stimuli: a systematic review Front Psychol 11 1-21
  • [5] Calvo M(2018)SAMM: a spontaneous Micro-facial movement dataset IEEE Trans Affect Comput 9 116-129
  • [6] Fernández-Martín A(2016)Spatiotemporal feature extraction for facial expression recognition IET Image Process 10 534-541
  • [7] Nummenmaa L(2021)Accurate computing of facial expression recognition using a hybrid feature extraction technique J Supercomput 77 5019-5044
  • [8] Chen J(2018)Zhao G (2018) can Micro-expression be recognized based on single apex frame? In proceedings of 2018 IEEE international conference on image processing (ICIP 2018), Athens Greece 7-10 3094-3098
  • [9] Xu R(2021)Joint local and global information learning with single apex frame detection for micro-expression recognition. IEEE trans Image Process 30 249-263
  • [10] Liu L(2021)Quantum-inspired multimodal fusion for video sentiment analysis Inf Fusion 65 58-71