Personalized models for facial emotion recognition through transfer learning

被引:0
|
作者
Martina Rescigno
Matteo Spezialetti
Silvia Rossi
机构
[1] University of Naples Federico II,Department of Electrical Engineering and Information Technology
来源
Multimedia Tools and Applications | 2020年 / 79卷
关键词
Facial emotion recognition; Convolutional neural networks; Transfer learning; Affective computing;
D O I
暂无
中图分类号
学科分类号
摘要
Emotions represent a key aspect of human life and behavior. In recent years, automatic recognition of emotions has become an important component in the fields of affective computing and human-machine interaction. Among many physiological and kinematic signals that could be used to recognize emotions, acquiring facial expression images is one of the most natural and inexpensive approaches. The creation of a generalized, inter-subject, model for emotion recognition from facial expression is still a challenge, due to anatomical, cultural and environmental differences. On the other hand, using traditional machine learning approaches to create a subject-customized, personal, model would require a large dataset of labelled samples. For these reasons, in this work, we propose the use of transfer learning to produce subject-specific models for extracting the emotional content of facial images in the valence/arousal dimensions. Transfer learning allows us to reuse the knowledge assimilated from a large multi-subject dataset by a deep-convolutional neural network and employ the feature extraction capability in the single subject scenario. In this way, it is possible to reduce the amount of labelled data necessary to train a personalized model, with respect to relying just on subjective data. Our results suggest that generalized transferred knowledge, in conjunction with a small amount of personal data, is sufficient to obtain high recognition performances and improvement with respect to both a generalized model and personal models. For both valence and arousal dimensions, quite good performances were obtained (RMSE = 0.09 and RMSE = 0.1 for valence and arousal, respectively). Overall results suggested that both the transferred knowledge and the personal data helped in achieving this improvement, even though they alternated in providing the main contribution. Moreover, in this task, we observed that the benefits of transferring knowledge are so remarkable that no specific active or passive sampling techniques are needed for selecting images to be labelled.
引用
收藏
页码:35811 / 35828
页数:17
相关论文
共 50 条
  • [41] Meta-transfer learning for emotion recognition
    Dung Nguyen
    Duc Thanh Nguyen
    Sridha Sridharan
    Simon Denman
    Thanh Thi Nguyen
    David Dean
    Clinton Fookes
    Neural Computing and Applications, 2023, 35 : 10535 - 10549
  • [42] Facial Emotion Recognition in Children and Adolescents with Specific Learning Disorder
    Operto, Francesca Felicia
    Pastorino, Grazia Maria Giovanna
    Stellato, Maria
    Morcaldi, Lucia
    Vetri, Luigi
    Carotenuto, Marco
    Viggiano, Andrea
    Coppola, Giangennaro
    BRAIN SCIENCES, 2020, 10 (08) : 1 - 11
  • [43] Review of Automatic Emotion Recognition Through Facial Expression Analysis
    Liliana, Dewi Yanti
    Basaruddin, T.
    2018 INTERNATIONAL CONFERENCE ON ELECTRICAL ENGINEERING AND COMPUTER SCIENCE (ICECOS), 2018, : 231 - 236
  • [44] Ensembles of Deep Learning Models and Transfer Learning for Ear Recognition
    Alshazly, Hammam
    Linse, Christoph
    Barth, Erhardt
    Martinetz, Thomas
    SENSORS, 2019, 19 (19)
  • [45] Discussions of Different Deep Transfer Learning Models for Emotion Recognitions
    Yen, Chih-Ta
    Li, Kang-Hua
    IEEE ACCESS, 2022, 10 : 102860 - 102875
  • [46] Deep Learning Models for Facial Expression Recognition
    Sajjanhar, Atul
    Wu, ZhaoQi
    Wen, Quan
    2018 INTERNATIONAL CONFERENCE ON DIGITAL IMAGE COMPUTING: TECHNIQUES AND APPLICATIONS (DICTA), 2018, : 583 - 588
  • [47] Enhancing Mouth-Based Emotion Recognition Using Transfer Learning
    Franzoni, Valentina
    Biondi, Giulio
    Perri, Damiano
    Gervasi, Osvaldo
    SENSORS, 2020, 20 (18) : 1 - 15
  • [48] Emotion-aware Multi-view Contrastive Learning for Facial Emotion Recognition
    Kim, Daeha
    Song, Byung Cheol
    COMPUTER VISION, ECCV 2022, PT XIII, 2022, 13673 : 178 - 195
  • [49] Anthropometric Facial Emotion Recognition
    Jarkiewicz, Julia
    Kocielnik, Rafal
    Marasek, Krzysztof
    HUMAN-COMPUTER INTERACTION, PT II, 2009, 5611 : 188 - 197
  • [50] Automating facial emotion recognition
    Gervasi, Osvaldo
    Franzoni, Valentina
    Riganelli, Matteo
    Tasso, Sergio
    WEB INTELLIGENCE, 2019, 17 (01) : 17 - 27