Fusing multi-stream deep neural networks for facial expression recognition

被引:0
作者
Fatima Zahra Salmam
Abdellah Madani
Mohamed Kissi
机构
[1] Chouaib Doukkali University,LAROSERI Laboratory, Department of Computer Science, Faculty of Sciences
[2] Hassan II University-Casablanca,LIM Laboratory, Department of Computer Science, Faculty of Sciences and Technologies
来源
Signal, Image and Video Processing | 2019年 / 13卷
关键词
Facial expression; Supervised descent method, correlation feature selection; Best first; Convolution neural network, deep neural network;
D O I
暂无
中图分类号
学科分类号
摘要
Among the factors contributing to conveying emotional state of an individual is facial expression. It represents the most important nonverbal communication and a challenging task in the field of computer vision. In this work, we propose a combined deep architecture model for facial expression recognition that uses appearance and geometric features extracted separately using convolution layers and supervised decent method, respectively. The proposed model is trained on three public databases [the Extended Cohn Kanade (CK+), the OULU-CASIA VIS, and the JAFFE]. The three databases contain a limited amount of data that we enlarge by adding a step of data augmentation to original images. For further comparison, two additional models that use appearance features only and geometric features only are trained on the same subset of data, to show how the combination of the two deep architectures influences results. On the other hand, in order to investigate the generalization of the combined model, a cross-database evaluation is performed. The obtained results achieve the state-of-the-art and improve recent work, especially in case of cross-database evaluation.
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页码:609 / 616
页数:7
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共 70 条
  • [1] Kamarol SKA(2017)Joint facial expression recognition and intensity estimation based on weighted votes of image sequences Pattern Recognit. Lett. 92 25-200
  • [2] Jaward MH(2017)Hierarchical Bayesian theme models for multipose facial expression recognition IEEE Trans. Multimed. 19 861-1618
  • [3] Kälviäinen H(2017)Facial expression recognition with faster R-CNN Procedia Comput. Sci 107 135-21
  • [4] Parkkinen J(2011)Communication without words Commun. Theory 1 193-undefined
  • [5] Parthiban R(1992)An argument for basic emotions Cognit. Emot. 6 169-undefined
  • [6] Mao Q(2016)Incorporating prior knowledge from the new person into recognition of facial expression Signal Image Video Process. 10 235-undefined
  • [7] Rao Q(2014)Entropy-based feature selection for improved 3D facial expression recognition Signal Image Video Process. 8 267-undefined
  • [8] Yu Y(2017)Facial expression recognition based on image pyramid and single-branch decision tree Signal Image Video Process. 11 1017-undefined
  • [9] Dong M(2018)Low-rank sparse coding and region of interest pooling for dynamic 3D facial expression recognition Signal Image Video Process. 12 1611-undefined
  • [10] Li J(2017)Facial expression recognition with convolutional neural networks: coping with few data and the training sample order Pattern Recognit. 61 610-undefined