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Published in: Cognitive Neurodynamics 4/2022

05-01-2022 | Research Article

Hierarchical scale convolutional neural network for facial expression recognition

Published in: Cognitive Neurodynamics | Issue 4/2022

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Abstract

Recognition of facial expressions plays an important role in understanding human behavior, classroom assessment, customer feedback, education, business, and many other human-machine interaction applications. Some researchers have realized that using features corresponding to different scales can improve the recognition accuracy, but there is a lack of a systematic study to utilize the scale information. In this work, we proposed a hierarchical scale convolutional neural network (HSNet) for facial expression recognition, which can systematically enhance the information extracted from the kernel, network, and knowledge scale. First, inspired by that the facial expression can be defined by different size facial action units and the power of sparsity, we proposed dilation Inception blocks to enhance kernel scale information extraction. Second, to supervise relatively shallow layers for learning more discriminated features from different size feature maps, we proposed a feature guided auxiliary learning approach to utilize high-level semantic features to guide the shallow layers learning. Last, since human cognitive ability can progressively be improved by learned knowledge, we mimicked such ability by knowledge transfer learning from related tasks. Extensive experiments on lab-controlled, synthesized, and in-the-wild databases showed that the proposed method substantially boosts performance, and achieved state-of-the-art accuracy on most databases. Ablation studies proved the effectiveness of modules in the proposed method.

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Literature
go back to reference Abbasi AA, Hussain L, Awan IA, Abbasi I, Majid A, Nadeem MSA, Chaudhary QA (2020) Detecting prostate cancer using deep learning convolution neural network with transfer learning approach. Cogn Neurodyn 14(4):523–533CrossRef Abbasi AA, Hussain L, Awan IA, Abbasi I, Majid A, Nadeem MSA, Chaudhary QA (2020) Detecting prostate cancer using deep learning convolution neural network with transfer learning approach. Cogn Neurodyn 14(4):523–533CrossRef
go back to reference Ali AM, Zhuang H, Ibrahim AK (2017) An approach for facial expression classification. In J Biometrics 9(2):96–112CrossRef Ali AM, Zhuang H, Ibrahim AK (2017) An approach for facial expression classification. In J Biometrics 9(2):96–112CrossRef
go back to reference Aneja D, Colburn A, Faigin G, Shapiro L, Mones B (2016) Modeling stylized character expressions via deep learning. In: Asian conference on computer vision, springer, pp 136–153 Aneja D, Colburn A, Faigin G, Shapiro L, Mones B (2016) Modeling stylized character expressions via deep learning. In: Asian conference on computer vision, springer, pp 136–153
go back to reference Bai Y, Guo L, Jin L, Huang Q (2009) A novel feature extraction method using pyramid histogram of orientation gradients for smile recognition. In: IEEE International conference on image processing, IEEE, pp 3305–3308 Bai Y, Guo L, Jin L, Huang Q (2009) A novel feature extraction method using pyramid histogram of orientation gradients for smile recognition. In: IEEE International conference on image processing, IEEE, pp 3305–3308
go back to reference Balahur A, Hermida JM, Montoyo A, Muñoz R (2011) Emotinet: A knowledge base for emotion detection in text built on the appraisal theories. In: International conference on application of natural language to information systems, Springer, pp 27–39 Balahur A, Hermida JM, Montoyo A, Muñoz R (2011) Emotinet: A knowledge base for emotion detection in text built on the appraisal theories. In: International conference on application of natural language to information systems, Springer, pp 27–39
go back to reference Barsoum E, Zhang C, Ferrer CC, Zhang Z (2016) Training deep networks for facial expression recognition with crowd-sourced label distribution. In: ACM international conference on multimodal interaction, ACM, pp 279–283 Barsoum E, Zhang C, Ferrer CC, Zhang Z (2016) Training deep networks for facial expression recognition with crowd-sourced label distribution. In: ACM international conference on multimodal interaction, ACM, pp 279–283
go back to reference Bartlett MS, Littlewort G, Fasel I, Movellan JR (2003) Real time face detection and facial expression recognition: Development and applications to human computer interaction. In: IEEE conference on computer vision and pattern recognition workshop, IEEE 5:53–53 Bartlett MS, Littlewort G, Fasel I, Movellan JR (2003) Real time face detection and facial expression recognition: Development and applications to human computer interaction. In: IEEE conference on computer vision and pattern recognition workshop, IEEE 5:53–53
go back to reference Bartlett MS, Littlewort G, Frank M, Lainscsek C, Fasel I, Movellan J (2005) Recognizing facial expression: machine learning and application to spontaneous behavior. IEEE Comput Soc Conf Comput Vis Pattern Recognit 2:568–573 Bartlett MS, Littlewort G, Frank M, Lainscsek C, Fasel I, Movellan J (2005) Recognizing facial expression: machine learning and application to spontaneous behavior. IEEE Comput Soc Conf Comput Vis Pattern Recognit 2:568–573
go back to reference Berretti S, Del Bimbo A, Pala P, Amor BB, Daoudi M (2010) A set of selected sift features for 3d facial expression recognition. In: International conference on pattern recognition, IEEE, pp 4125–4128 Berretti S, Del Bimbo A, Pala P, Amor BB, Daoudi M (2010) A set of selected sift features for 3d facial expression recognition. In: International conference on pattern recognition, IEEE, pp 4125–4128
go back to reference Cai J, Meng Z, Khan AS, Li Z, O’Reilly J, Tong Y (2018) Probabilistic attribute tree in convolutional neural networks for facial expression recognition. arXiv preprint arXiv:181207067 Cai J, Meng Z, Khan AS, Li Z, O’Reilly J, Tong Y (2018) Probabilistic attribute tree in convolutional neural networks for facial expression recognition. arXiv preprint arXiv:​181207067
go back to reference Cao Q, Shen L, Xie W, Parkhi OM, Zisserman A (2018) Vggface2: A dataset for recognising faces across pose and age. In: IEEE international conference on automatic face and gesture recognition, IEEE, pp 67–74 Cao Q, Shen L, Xie W, Parkhi OM, Zisserman A (2018) Vggface2: A dataset for recognising faces across pose and age. In: IEEE international conference on automatic face and gesture recognition, IEEE, pp 67–74
go back to reference Chang FJ, Tran AT, Hassner T, Masi I, Nevatia R, Medioni G (2018) Expnet: Landmark-free, deep, 3d facial expressions. In: IEEE International conference on automatic face and gesture recognition, IEEE, pp 122–129 Chang FJ, Tran AT, Hassner T, Masi I, Nevatia R, Medioni G (2018) Expnet: Landmark-free, deep, 3d facial expressions. In: IEEE International conference on automatic face and gesture recognition, IEEE, pp 122–129
go back to reference Chen T, Kornblith S, Norouzi M, Hinton G (2020) A simple framework for contrastive learning of visual representations. In: International conference on machine learning, PMLR, pp 1597–1607 Chen T, Kornblith S, Norouzi M, Hinton G (2020) A simple framework for contrastive learning of visual representations. In: International conference on machine learning, PMLR, pp 1597–1607
go back to reference Chen X, Pan Z, Wang P, Zhang L, Yuan J (2015) Eeg oscillations reflect task effects for the change detection in vocal emotion. Cogn Neurodyn 9(3):351–358CrossRef Chen X, Pan Z, Wang P, Zhang L, Yuan J (2015) Eeg oscillations reflect task effects for the change detection in vocal emotion. Cogn Neurodyn 9(3):351–358CrossRef
go back to reference Deng Z, Choi KS, Jiang Y, Wang S (2014) Generalized hidden-mapping ridge regression, knowledge-leveraged inductive transfer learning for neural networks, fuzzy systems and kernel methods. IEEE Trans Cybern 44(12):2585–2599CrossRef Deng Z, Choi KS, Jiang Y, Wang S (2014) Generalized hidden-mapping ridge regression, knowledge-leveraged inductive transfer learning for neural networks, fuzzy systems and kernel methods. IEEE Trans Cybern 44(12):2585–2599CrossRef
go back to reference Devlin J, Chang MW, Lee K, Toutanova K (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Proceedings of the 2019 Conference of the North American chapter of the association for computational linguistics: human language technologies. 1:4171–4186 Devlin J, Chang MW, Lee K, Toutanova K (2019) BERT: Pre-training of deep bidirectional transformers for language understanding. In: Proceedings of the 2019 Conference of the North American chapter of the association for computational linguistics: human language technologies. 1:4171–4186
go back to reference Fan X, Qureshi R, Shahid AR, Cao J, Yang L, Yan H (2020) Hybrid separable convolutional inception residual network for human facial expression recognition. In: International conference on machine learning and cybernetics, IEEE, pp 21–26 Fan X, Qureshi R, Shahid AR, Cao J, Yang L, Yan H (2020) Hybrid separable convolutional inception residual network for human facial expression recognition. In: International conference on machine learning and cybernetics, IEEE, pp 21–26
go back to reference Feutry C, Piantanida P, Bengio Y, Duhamel P (2018) Learning anonymized representations with adversarial neural networks. arXiv preprint arXiv:180209386 Feutry C, Piantanida P, Bengio Y, Duhamel P (2018) Learning anonymized representations with adversarial neural networks. arXiv preprint arXiv:​180209386
go back to reference He K, Zhang X, Ren S, Sun J (2015) Delving deep into rectifiers: Surpassing human-level performance on imagenet classification. In: IEEE International conference on computer vision, pp 1026–1034 He K, Zhang X, Ren S, Sun J (2015) Delving deep into rectifiers: Surpassing human-level performance on imagenet classification. In: IEEE International conference on computer vision, pp 1026–1034
go back to reference He K, Zhang X, Ren S, Sun J (2016) Deep residual learning for image recognition. In: IEEE conference on computer vision and pattern recognition, pp 770–778 He K, Zhang X, Ren S, Sun J (2016) Deep residual learning for image recognition. In: IEEE conference on computer vision and pattern recognition, pp 770–778
go back to reference Hu P, Cai D, Wang S, Yao A, Chen Y (2017) Learning supervised scoring ensemble for emotion recognition in the wild. In: Proceedings of the 19th ACM international conference on multimodal interaction, pp 553–560 Hu P, Cai D, Wang S, Yao A, Chen Y (2017) Learning supervised scoring ensemble for emotion recognition in the wild. In: Proceedings of the 19th ACM international conference on multimodal interaction, pp 553–560
go back to reference Kasiran Z, Yahya S (2007) Facial expression as an implicit customers’ feedback and the challenges. IEEE Kasiran Z, Yahya S (2007) Facial expression as an implicit customers’ feedback and the challenges. IEEE
go back to reference Khan S, Chen L, Zhe X, Yan H (2016) Feature selection based on co-clustering for effective facial expression recognition. Int Conf Mach Learn Cyberne 1:48–53 Khan S, Chen L, Zhe X, Yan H (2016) Feature selection based on co-clustering for effective facial expression recognition. Int Conf Mach Learn Cyberne 1:48–53
go back to reference Khan S, Chen L, Yan H (2017) Co-clustering to reveal salient facial features for expression recognition. IEEE Trans Affect Comput 11:314 Khan S, Chen L, Yan H (2017) Co-clustering to reveal salient facial features for expression recognition. IEEE Trans Affect Comput 11:314
go back to reference Khorrami P, Paine T, Huang T (2015) Do deep neural networks learn facial action units when doing expression recognition? In: IEEE International conference on computer vision workshops, pp 19–27 Khorrami P, Paine T, Huang T (2015) Do deep neural networks learn facial action units when doing expression recognition? In: IEEE International conference on computer vision workshops, pp 19–27
go back to reference Kingma DP, Ba J (2015) Adam: a method for stochastic optimization. In: International conference on learning representations Kingma DP, Ba J (2015) Adam: a method for stochastic optimization. In: International conference on learning representations
go back to reference Koujan MR, Alharbawee L, Giannakakis G, Pugeault N, Roussos A (2020) Real-time facial expression recognition” in the wild”by disentangling 3d expression from identity. In: International conference on automatic face and gesture recognition, IEEE Koujan MR, Alharbawee L, Giannakakis G, Pugeault N, Roussos A (2020) Real-time facial expression recognition” in the wild”by disentangling 3d expression from identity. In: International conference on automatic face and gesture recognition, IEEE
go back to reference Krizhevsky A, Sutskever I, Hinton GE (2012) Imagenet classification with deep convolutional neural networks. Adv Neural Inf Process Syst 25:1097–1105 Krizhevsky A, Sutskever I, Hinton GE (2012) Imagenet classification with deep convolutional neural networks. Adv Neural Inf Process Syst 25:1097–1105
go back to reference Langner O, Dotsch R, Bijlstra G, Wigboldus DH, Hawk ST, Van Knippenberg A (2010) Presentation and validation of the radboud faces database. Cogn Emot 24(8):1377–1388CrossRef Langner O, Dotsch R, Bijlstra G, Wigboldus DH, Hawk ST, Van Knippenberg A (2010) Presentation and validation of the radboud faces database. Cogn Emot 24(8):1377–1388CrossRef
go back to reference Li M, Xu H, Huang X, Song Z, Liu X, Li X (2018) Facial expression recognition with identity and emotion joint learning. In: IEEE Transactions on affective computing Li M, Xu H, Huang X, Song Z, Liu X, Li X (2018) Facial expression recognition with identity and emotion joint learning. In: IEEE Transactions on affective computing
go back to reference Li S, Deng W (2018) Reliable crowdsourcing and deep locality-preserving learning for unconstrained facial expression recognition. IEEE Trans Image Process 28(1):356–370CrossRef Li S, Deng W (2018) Reliable crowdsourcing and deep locality-preserving learning for unconstrained facial expression recognition. IEEE Trans Image Process 28(1):356–370CrossRef
go back to reference Li S, Deng W (2020) Deep facial expression recognition: a survey. IEEE Trans Affect Comput Li S, Deng W (2020) Deep facial expression recognition: a survey. IEEE Trans Affect Comput
go back to reference Li S, Deng W, Du J (2017) Reliable crowdsourcing and deep locality-preserving learning for expression recognition in the wild. In: IEEE Conference on computer vision and pattern recognition, pp 2852–2861 Li S, Deng W, Du J (2017) Reliable crowdsourcing and deep locality-preserving learning for expression recognition in the wild. In: IEEE Conference on computer vision and pattern recognition, pp 2852–2861
go back to reference Lian Z, Li Y, Tao JH, Huang J, Niu MY (2020) Expression analysis based on face regions in read-world conditions. Int J Autom Comput 17(1):96–107CrossRef Lian Z, Li Y, Tao JH, Huang J, Niu MY (2020) Expression analysis based on face regions in read-world conditions. Int J Autom Comput 17(1):96–107CrossRef
go back to reference Lin TY, Dollár P, Girshick R, He K, Hariharan B, Belongie S (2017) Feature pyramid networks for object detection. In: IEEE conference on computer vision and pattern recognition, pp 2117–2125 Lin TY, Dollár P, Girshick R, He K, Hariharan B, Belongie S (2017) Feature pyramid networks for object detection. In: IEEE conference on computer vision and pattern recognition, pp 2117–2125
go back to reference Lucey P, Cohn JF, Kanade T, Saragih J, Ambadar Z, Matthews I (2010) The extended cohn-kanade dataset (ck+): A complete dataset for action unit and emotion-specified expression. In: IEEE conference on computer vision and pattern recognition workshops, IEEE, pp 94–101 Lucey P, Cohn JF, Kanade T, Saragih J, Ambadar Z, Matthews I (2010) The extended cohn-kanade dataset (ck+): A complete dataset for action unit and emotion-specified expression. In: IEEE conference on computer vision and pattern recognition workshops, IEEE, pp 94–101
go back to reference Lundqvist D, Flykt A, Öhman A (1998) The karolinska directed emotional faces (kdef). Department of Clinical Neuroscience, Psychology section, Karolinska Institutet 91(630):2–2 Lundqvist D, Flykt A, Öhman A (1998) The karolinska directed emotional faces (kdef). Department of Clinical Neuroscience, Psychology section, Karolinska Institutet 91(630):2–2
go back to reference Luong MT, Pham H, Manning CD (2015) Effective approaches to attention-based neural machine translation. In: Proceedings of the 2015 conference on empirical methods in natural language processing, pp 1412–1421 Luong MT, Pham H, Manning CD (2015) Effective approaches to attention-based neural machine translation. In: Proceedings of the 2015 conference on empirical methods in natural language processing, pp 1412–1421
go back to reference Mao Q, Rao Q, Yu Y, Dong M (2016) Hierarchical bayesian theme models for multipose facial expression recognition. IEEE Trans Multimedia 19(4):861–873CrossRef Mao Q, Rao Q, Yu Y, Dong M (2016) Hierarchical bayesian theme models for multipose facial expression recognition. IEEE Trans Multimedia 19(4):861–873CrossRef
go back to reference Mavani V, Raman S, Miyapuram KP (2017) Facial expression recognition using visual saliency and deep learning. In: IEEE international conference on computer vision, pp 2783–2788 Mavani V, Raman S, Miyapuram KP (2017) Facial expression recognition using visual saliency and deep learning. In: IEEE international conference on computer vision, pp 2783–2788
go back to reference Minaee S, Abdolrashidi A (2019) Deep-emotion: Facial expression recognition using attentional convolutional network. arXiv preprint arXiv:190201019 Minaee S, Abdolrashidi A (2019) Deep-emotion: Facial expression recognition using attentional convolutional network. arXiv preprint arXiv:​190201019
go back to reference Mollahosseini A, Chan D, Mahoor MH (2016) Going deeper in facial expression recognition using deep neural networks. In: IEEE Winter conference on applications of computer vision, IEEE, pp 1–10 Mollahosseini A, Chan D, Mahoor MH (2016) Going deeper in facial expression recognition using deep neural networks. In: IEEE Winter conference on applications of computer vision, IEEE, pp 1–10
go back to reference Mollahosseini A, Hasani B, Mahoor MH (2017) Affectnet: a database for facial expression, valence, and arousal computing in the wild. IEEE Trans Affect Comput 10(1):18–31CrossRef Mollahosseini A, Hasani B, Mahoor MH (2017) Affectnet: a database for facial expression, valence, and arousal computing in the wild. IEEE Trans Affect Comput 10(1):18–31CrossRef
go back to reference Ocegueda O, Shah SK, Kakadiaris IA (2011) Which parts of the face give out your identity? In: IEEE conference on computer vision and pattern recognition, IEEE, pp 641–648 Ocegueda O, Shah SK, Kakadiaris IA (2011) Which parts of the face give out your identity? In: IEEE conference on computer vision and pattern recognition, IEEE, pp 641–648
go back to reference Pan SJ, Yang Q (2009) A survey on transfer learning. IEEE Trans Knowl Data Eng 22(10):1345–1359CrossRef Pan SJ, Yang Q (2009) A survey on transfer learning. IEEE Trans Knowl Data Eng 22(10):1345–1359CrossRef
go back to reference Paszke A, Gross S, Massa F, Lerer A, Bradbury J, Chanan G, Killeen T, Lin Z, Gimelshein N, Antiga L et al (2019) Pytorch: an imperative style, high-performance deep learning library. Adv Neural Inf Process Syst 32:8024–8035 Paszke A, Gross S, Massa F, Lerer A, Bradbury J, Chanan G, Killeen T, Lin Z, Gimelshein N, Antiga L et al (2019) Pytorch: an imperative style, high-performance deep learning library. Adv Neural Inf Process Syst 32:8024–8035
go back to reference Prieto LAB, Oplatkova ZK (2018) Emotion recognition using autoencoders and convolutional neural networks. Mendel 24(1):113–120CrossRef Prieto LAB, Oplatkova ZK (2018) Emotion recognition using autoencoders and convolutional neural networks. Mendel 24(1):113–120CrossRef
go back to reference Ruiz-Garcia A, Elshaw M, Altahhan A, Palade V (2017) Stacked deep convolutional auto-encoders for emotion recognition from facial expressions. In: International joint conference on neural networks, IEEE, pp 1586–1593 Ruiz-Garcia A, Elshaw M, Altahhan A, Palade V (2017) Stacked deep convolutional auto-encoders for emotion recognition from facial expressions. In: International joint conference on neural networks, IEEE, pp 1586–1593
go back to reference Shahid AR, Khan S, Yan H (2020) Contour and region harmonic features for sub-local facial expression recognition. J Vis Commun Image Represent 73:102949CrossRef Shahid AR, Khan S, Yan H (2020) Contour and region harmonic features for sub-local facial expression recognition. J Vis Commun Image Represent 73:102949CrossRef
go back to reference Shan C, Gong S, McOwan PW (2005) Robust facial expression recognition using local binary patterns. In: IEEE international conference on image processing, IEEE, 2:II–370 Shan C, Gong S, McOwan PW (2005) Robust facial expression recognition using local binary patterns. In: IEEE international conference on image processing, IEEE, 2:II–370
go back to reference Shen F, Dai G, Lin G, Zhang J, Kong W, Zeng H (2020) Eeg-based emotion recognition using 4d convolutional recurrent neural network. Cogn Neurodyn 14(6):815–828CrossRef Shen F, Dai G, Lin G, Zhang J, Kong W, Zeng H (2020) Eeg-based emotion recognition using 4d convolutional recurrent neural network. Cogn Neurodyn 14(6):815–828CrossRef
go back to reference Shih FY, Chuang CF, Wang PS (2008) Performance comparisons of facial expression recognition in jaffe database. Int J Pattern Recognit Artif Intell 22(03):445–459CrossRef Shih FY, Chuang CF, Wang PS (2008) Performance comparisons of facial expression recognition in jaffe database. Int J Pattern Recognit Artif Intell 22(03):445–459CrossRef
go back to reference Sun W, Zhao H, Jin Z (2017) An efficient unconstrained facial expression recognition algorithm based on stack binarized auto-encoders and binarized neural networks. Neurocomputing 267:385–395CrossRef Sun W, Zhao H, Jin Z (2017) An efficient unconstrained facial expression recognition algorithm based on stack binarized auto-encoders and binarized neural networks. Neurocomputing 267:385–395CrossRef
go back to reference Szegedy C, Liu W, Jia Y, Sermanet P, Reed S, Anguelov D, Erhan D, Vanhoucke V, Rabinovich A (2015) Going deeper with convolutions. In: IEEE conference on computer vision and pattern recognition, pp 1–9 Szegedy C, Liu W, Jia Y, Sermanet P, Reed S, Anguelov D, Erhan D, Vanhoucke V, Rabinovich A (2015) Going deeper with convolutions. In: IEEE conference on computer vision and pattern recognition, pp 1–9
go back to reference Szegedy C, Vanhoucke V, Ioffe S, Shlens J, Wojna Z (2016) Rethinking the inception architecture for computer vision. In: IEEE conference on computer vision and pattern recognition, pp 2818–2826 Szegedy C, Vanhoucke V, Ioffe S, Shlens J, Wojna Z (2016) Rethinking the inception architecture for computer vision. In: IEEE conference on computer vision and pattern recognition, pp 2818–2826
go back to reference Szegedy C, Ioffe S, Vanhoucke V, Alemi AA (2017) Inception-v4, inception-resnet and the impact of residual connections on learning. In: Thirty-First AAAI conference on artificial intelligence Szegedy C, Ioffe S, Vanhoucke V, Alemi AA (2017) Inception-v4, inception-resnet and the impact of residual connections on learning. In: Thirty-First AAAI conference on artificial intelligence
go back to reference Tan C, Sun F, Kong T, Zhang W, Yang C, Liu C (2018) A survey on deep transfer learning. In: International conference on artificial neural networks, Springer, pp 270–279 Tan C, Sun F, Kong T, Zhang W, Yang C, Liu C (2018) A survey on deep transfer learning. In: International conference on artificial neural networks, Springer, pp 270–279
go back to reference Trepagnier CY, Sebrechts MM, Finkelmeyer A, Stewart W, Woodford J, Coleman M (2006) Simulating social interaction to address deficits of autistic spectrum disorder in children. Cyberpsychol Behav 9(2):213–217CrossRef Trepagnier CY, Sebrechts MM, Finkelmeyer A, Stewart W, Woodford J, Coleman M (2006) Simulating social interaction to address deficits of autistic spectrum disorder in children. Cyberpsychol Behav 9(2):213–217CrossRef
go back to reference Wang S, Liu Z, Lv S, Lv Y, Wu G, Peng P, Chen F, Wang X (2010) A natural visible and infrared facial expression database for expression recognition and emotion inference. IEEE Trans Multimedia 12(7):682–691CrossRef Wang S, Liu Z, Lv S, Lv Y, Wu G, Peng P, Chen F, Wang X (2010) A natural visible and infrared facial expression database for expression recognition and emotion inference. IEEE Trans Multimedia 12(7):682–691CrossRef
go back to reference Wen G, Chang T, Li H, Jiang L (2020) Dynamic objectives learning for facial expression recognition. IEEE Trans Multimed 22:2914CrossRef Wen G, Chang T, Li H, Jiang L (2020) Dynamic objectives learning for facial expression recognition. IEEE Trans Multimed 22:2914CrossRef
go back to reference Wen Y, Zhang K, Li Z, Qiao Y (2016) A discriminative feature learning approach for deep face recognition. In: European conference on computer vision, Springer, pp 499–515 Wen Y, Zhang K, Li Z, Qiao Y (2016) A discriminative feature learning approach for deep face recognition. In: European conference on computer vision, Springer, pp 499–515
go back to reference Yaddaden Y, Adda M, Bouzouane A, Gaboury S, Bouchard B (2018) User action and facial expression recognition for error detection system in an ambient assisted environment. Expert Syst Appl 112:173–189CrossRef Yaddaden Y, Adda M, Bouzouane A, Gaboury S, Bouchard B (2018) User action and facial expression recognition for error detection system in an ambient assisted environment. Expert Syst Appl 112:173–189CrossRef
go back to reference Yosinski J, Clune J, Bengio Y, Lipson H (2014) How transferable are features in deep neural networks? Adv Neural Inf Process Syst 27:3320–3328 Yosinski J, Clune J, Bengio Y, Lipson H (2014) How transferable are features in deep neural networks? Adv Neural Inf Process Syst 27:3320–3328
go back to reference Yu F, Koltun V (2016) Multi-scale context aggregation by dilated convolutions. In: International conference on learning representations Yu F, Koltun V (2016) Multi-scale context aggregation by dilated convolutions. In: International conference on learning representations
go back to reference Zamir AR, Sax A, Shen W, Guibas LJ, Malik J, Savarese S (2018) Taskonomy: Disentangling task transfer learning. In: IEEE Conference on computer vision and pattern recognition, pp 3712–3722 Zamir AR, Sax A, Shen W, Guibas LJ, Malik J, Savarese S (2018) Taskonomy: Disentangling task transfer learning. In: IEEE Conference on computer vision and pattern recognition, pp 3712–3722
go back to reference Zavarez MV, Berriel RF, Oliveira-Santos T (2017) Cross-database facial expression recognition based on fine-tuned deep convolutional network. SIBGRAPI conference on graphics, Patterns and Images, IEEE, pp 405–412 Zavarez MV, Berriel RF, Oliveira-Santos T (2017) Cross-database facial expression recognition based on fine-tuned deep convolutional network. SIBGRAPI conference on graphics, Patterns and Images, IEEE, pp 405–412
go back to reference Zeng H, Shu X, Wang Y, Wang Y, Zhang L, Pong TC, Qu H (2020) Emotioncues: emotion-oriented visual summarization of classroom videos. Trans Vis Comput Graph 27:3168CrossRef Zeng H, Shu X, Wang Y, Wang Y, Zhang L, Pong TC, Qu H (2020) Emotioncues: emotion-oriented visual summarization of classroom videos. Trans Vis Comput Graph 27:3168CrossRef
go back to reference Zhang H, Su W, Yu J, Wang Z (2020) Identity-expression dual branch network for facial expression recognition. In: IEEE transactions on cognitive and developmental systems Zhang H, Su W, Yu J, Wang Z (2020) Identity-expression dual branch network for facial expression recognition. In: IEEE transactions on cognitive and developmental systems
go back to reference Zhang K, Zhang Z, Li Z, Qiao Y (2016) Joint face detection and alignment using multitask cascaded convolutional networks. IEEE Signal Process Lett 23(10):1499–1503CrossRef Zhang K, Zhang Z, Li Z, Qiao Y (2016) Joint face detection and alignment using multitask cascaded convolutional networks. IEEE Signal Process Lett 23(10):1499–1503CrossRef
go back to reference Zhao H, Liu Q, Yang Y (2018) Transfer learning with ensemble of multiple feature representations. In: International conference on software engineering research management and applications, IEEE, pp 54–61 Zhao H, Liu Q, Yang Y (2018) Transfer learning with ensemble of multiple feature representations. In: International conference on software engineering research management and applications, IEEE, pp 54–61
Metadata
Title
Hierarchical scale convolutional neural network for facial expression recognition
Publication date
05-01-2022
Published in
Cognitive Neurodynamics / Issue 4/2022
Print ISSN: 1871-4080
Electronic ISSN: 1871-4099
DOI
https://doi.org/10.1007/s11571-021-09761-3

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