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18.03.2024 | Research Article

Multiple-source distribution deep adaptive feature norm network for EEG emotion recognition

verfasst von: Lei Zhu, Fei Yu, Wangpan Ding, Aiai Huang, Nanjiao Ying, Jianhai Zhang

Erschienen in: Cognitive Neurodynamics

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Abstract

Electroencephalogram (EEG) emotion recognition plays an important role in human–computer interaction, and a higher recognition accuracy can improve the user experience. In recent years, domain adaptive methods in transfer learning have been used to construct a general emotion recognition model to deal with domain difference among different subjects and sessions. However, it is still challenging to effectively reduce domain difference in domain adaptation. In this paper, we propose a Multiple-Source Distribution Deep Adaptive Feature Norm Network for EEG emotion recognition, which reduce domain difference by improving the transferability of task-specific features. In detail, the domain adaptive method of our model employs a three-layer network topology, inserts Adaptive Feature Norm to self-supervised adjustment between different layers, and combines a multiple-kernel selection approach to mean embedding matching. The method proposed in this paper achieves the best classification performance in the SEED and SEED-IV datasets. In SEED dataset, the average accuracy of cross-subject and cross-session experiments is 85.01 and 91.93%, respectively. In SEED-IV dataset, the average accuracy is 58.81% in cross-subject experiments and 59.51% in cross-session experiments. The experimental results demonstrate that our method can effectively reduce the domain difference and improve the emotion recognition accuracy.

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Literatur
Zurück zum Zitat Ahmed F, Bari ASMH, Gavrilova ML (2019) Emotion recognition from body movement. IEEE Access 8:11761–11781CrossRef Ahmed F, Bari ASMH, Gavrilova ML (2019) Emotion recognition from body movement. IEEE Access 8:11761–11781CrossRef
Zurück zum Zitat Borgwardt KM, Gretton A, Rasch MJ et al (2006) Integrating structured biological data by Kernel Maximum Mean Discrepancy. Bioinformatics 22(14):e49–e57CrossRefPubMed Borgwardt KM, Gretton A, Rasch MJ et al (2006) Integrating structured biological data by Kernel Maximum Mean Discrepancy. Bioinformatics 22(14):e49–e57CrossRefPubMed
Zurück zum Zitat Bozhokin SV, Suslova IB (2015) Wavelet-based analysis of spectral rearrangements of EEG patterns and of non-stationary correlations[J]. Physica A 421:151–160MathSciNetCrossRef Bozhokin SV, Suslova IB (2015) Wavelet-based analysis of spectral rearrangements of EEG patterns and of non-stationary correlations[J]. Physica A 421:151–160MathSciNetCrossRef
Zurück zum Zitat Chai X, Wang Q, Zhao Y et al (2016) Unsupervised domain adaptation techniques based on auto-encoder for non-stationary EEG-based emotion recognition[J]. Comput Biol Med 79:205–214CrossRefPubMed Chai X, Wang Q, Zhao Y et al (2016) Unsupervised domain adaptation techniques based on auto-encoder for non-stationary EEG-based emotion recognition[J]. Comput Biol Med 79:205–214CrossRefPubMed
Zurück zum Zitat Chen H, Jin M, Li Z et al (2021) MS-MDA: Multisource Marginal Distribution Adaptation for Cross-subject and Cross-session EEG Emotion Recognition [J]. Front Neurosci 15:778488CrossRefPubMedPubMedCentral Chen H, Jin M, Li Z et al (2021) MS-MDA: Multisource Marginal Distribution Adaptation for Cross-subject and Cross-session EEG Emotion Recognition [J]. Front Neurosci 15:778488CrossRefPubMedPubMedCentral
Zurück zum Zitat Chen H, Li Z, Jin M, et al (2021) MEERNet: multi-source EEG-based emotion recognition network for generalization across subjects and sessions[C]//2021 In: 43rd Annual International Conference of the IEEE Engineering in Medicine & Biology Society (EMBC). IEEE, pp 6094–6097 Chen H, Li Z, Jin M, et al (2021) MEERNet: multi-source EEG-based emotion recognition network for generalization across subjects and sessions[C]//2021 In: 43rd Annual International Conference of the IEEE Engineering in Medicine & Biology Society (EMBC). IEEE, pp 6094–6097
Zurück zum Zitat Cowie R, Douglas-Cowie E, Tsapatsoulis N et al (2001) Emotion recognition in human-computer interaction [J]. IEEE Signal Process Mag 18(1):32–80ADSCrossRef Cowie R, Douglas-Cowie E, Tsapatsoulis N et al (2001) Emotion recognition in human-computer interaction [J]. IEEE Signal Process Mag 18(1):32–80ADSCrossRef
Zurück zum Zitat Duan RN, Zhu JY, Lu BL (2013) Differential entropy feature for EEG-based emotion classification[C]//2013 In: 6th International IEEE/EMBS Conference on Neural Engineering (NER). IEEE, pp 81–84 Duan RN, Zhu JY, Lu BL (2013) Differential entropy feature for EEG-based emotion classification[C]//2013 In: 6th International IEEE/EMBS Conference on Neural Engineering (NER). IEEE, pp 81–84
Zurück zum Zitat Ganin Y, Ustinova E, Ajakan H et al (2016) Domain-adversarial training of neural networks [J]. J Mach Learn Res 17(1):1–35MathSciNet Ganin Y, Ustinova E, Ajakan H et al (2016) Domain-adversarial training of neural networks [J]. J Mach Learn Res 17(1):1–35MathSciNet
Zurück zum Zitat Ghare PS, Paithane AN (2016) Human emotion recognition using non-linear and non-stationary EEG signal[C]//2016 In: International Conference on Automatic Control and Dynamic Optimization Techniques (ICACDOT). IEEE, pp 1013–1016 Ghare PS, Paithane AN (2016) Human emotion recognition using non-linear and non-stationary EEG signal[C]//2016 In: International Conference on Automatic Control and Dynamic Optimization Techniques (ICACDOT). IEEE, pp 1013–1016
Zurück zum Zitat Gu X, Cai W, Gao M et al (2022) Multi-source domain transfer discriminative dictionary learning modeling for electroencephalogram-based emotion recognition [J]. IEEE Trans Comput Soc Syst 9(6):1604–1612CrossRef Gu X, Cai W, Gao M et al (2022) Multi-source domain transfer discriminative dictionary learning modeling for electroencephalogram-based emotion recognition [J]. IEEE Trans Comput Soc Syst 9(6):1604–1612CrossRef
Zurück zum Zitat Hang W, Feng W, Du R et al (2019) Cross-subject EEG signal recognition using deep domain adaptation network[J]. IEEE Access 7:128273–128282CrossRef Hang W, Feng W, Du R et al (2019) Cross-subject EEG signal recognition using deep domain adaptation network[J]. IEEE Access 7:128273–128282CrossRef
Zurück zum Zitat Hinton G, van der Maaten L (2008) Visualizing data using t-SNE. J Mach Learn Res [J] 9:2579 Hinton G, van der Maaten L (2008) Visualizing data using t-SNE. J Mach Learn Res [J] 9:2579
Zurück zum Zitat Imran A, Athitsos V M (2021) Adaptive feature norm for unsupervised subdomain adaptation [C]//International Symposium on Visual Computing. Springer, Cham, pp 341-352 Imran A, Athitsos V M (2021) Adaptive feature norm for unsupervised subdomain adaptation [C]//International Symposium on Visual Computing. Springer, Cham, pp 341-352
Zurück zum Zitat Jin YM, Luo YD, Zheng WL, et al (2017) EEG-based emotion recognition using domain adaptation network[C]//2017 In: international conference on orange technologies (ICOT). IEEE, pp 222–225 Jin YM, Luo YD, Zheng WL, et al (2017) EEG-based emotion recognition using domain adaptation network[C]//2017 In: international conference on orange technologies (ICOT). IEEE, pp 222–225
Zurück zum Zitat LiH, Jin YM, Zheng WL, et al (2018) Cross-subject emotion recognition using deep adaptation networks[C]//In: International conference on neural information processing. Springer, Cham, pp 403–413. LiH, Jin YM, Zheng WL, et al (2018) Cross-subject emotion recognition using deep adaptation networks[C]//In: International conference on neural information processing. Springer, Cham, pp 403–413.
Zurück zum Zitat Liu ZT, Xie Q, Wu M et al (2018) Speech emotion recognition based on an improved brain emotion learning model [J]. Neurocomputing 309:145–156CrossRef Liu ZT, Xie Q, Wu M et al (2018) Speech emotion recognition based on an improved brain emotion learning model [J]. Neurocomputing 309:145–156CrossRef
Zurück zum Zitat Long M, Wang J (2015) Learning transferable features with deep adaptation networks[C]// JMLR.org. JMLR.org Long M, Wang J (2015) Learning transferable features with deep adaptation networks[C]// JMLR.org. JMLR.org
Zurück zum Zitat Lotte F, Guan C (2010) Learning from other subjects helps reducing brain-computer interface calibration time[C]//2010 In: IEEE International conference on acoustics, speech and signal processing. IEEE, pp 614–617 Lotte F, Guan C (2010) Learning from other subjects helps reducing brain-computer interface calibration time[C]//2010 In: IEEE International conference on acoustics, speech and signal processing. IEEE, pp 614–617
Zurück zum Zitat Mithbavkar SA, Shah MS (2021) Analysis of EMG based emotion recognition for multiple people and emotions[C]//2021 In: IEEE 3rd Eurasia Conference on Biomedical Engineering, Healthcare and Sustainability (ECBIOS). IEEE, pp 1–4 Mithbavkar SA, Shah MS (2021) Analysis of EMG based emotion recognition for multiple people and emotions[C]//2021 In: IEEE 3rd Eurasia Conference on Biomedical Engineering, Healthcare and Sustainability (ECBIOS). IEEE, pp 1–4
Zurück zum Zitat Shin Y, Lee S, Ahn M et al (2015) Noise robustness analysis of sparse representation based classification method for non-stationary EEG signal classification[J]. Biomed Signal Process Control 21:8–18CrossRef Shin Y, Lee S, Ahn M et al (2015) Noise robustness analysis of sparse representation based classification method for non-stationary EEG signal classification[J]. Biomed Signal Process Control 21:8–18CrossRef
Zurück zum Zitat Tzeng E, Hoffman J, Zhang N, et al (2014) Deep domain confusion: maximizing for domain invariance [J]. arXiv preprint arXiv:1412.3474 Tzeng E, Hoffman J, Zhang N, et al (2014) Deep domain confusion: maximizing for domain invariance [J]. arXiv preprint arXiv:​1412.​3474
Zurück zum Zitat Tzeng E, Hoffman J, Saenko K, et al (2017) Adversarial discriminative domain adaptation [C]//In: Proceedings of the IEEE conference on computer vision and pattern recognition. pp 7167–7176 Tzeng E, Hoffman J, Saenko K, et al (2017) Adversarial discriminative domain adaptation [C]//In: Proceedings of the IEEE conference on computer vision and pattern recognition. pp 7167–7176
Zurück zum Zitat Wu G, Liu G, Hao M (2010) The analysis of emotion recognition from GSR based on PSO[C]//2010 In: International symposium on intelligence information processing and trusted computing. IEEE, pp 360–363 Wu G, Liu G, Hao M (2010) The analysis of emotion recognition from GSR based on PSO[C]//2010 In: International symposium on intelligence information processing and trusted computing. IEEE, pp 360–363
Zurück zum Zitat Xu R, Li G, Yang J, et al (2018) Larger norm more transferable: an adaptive feature norm approach for unsupervised domain adaptation[J] Xu R, Li G, Yang J, et al (2018) Larger norm more transferable: an adaptive feature norm approach for unsupervised domain adaptation[J]
Zurück zum Zitat Yosinski J, Clune J, Bengio Y, et al (2014) How transferable are features in deep neural networks? [J]. MIT Press Yosinski J, Clune J, Bengio Y, et al (2014) How transferable are features in deep neural networks? [J]. MIT Press
Zurück zum Zitat Zhao L M, Yan X, Lu B L (2021) Plug-and-play domain adaptation for cross-subject EEG-based emotion recognition[C]//In: Proceedings of the AAAI Conference on Artificial Intelligence., vol 35(1): pp 863–870 Zhao L M, Yan X, Lu B L (2021) Plug-and-play domain adaptation for cross-subject EEG-based emotion recognition[C]//In: Proceedings of the AAAI Conference on Artificial Intelligence., vol 35(1): pp 863–870
Zurück zum Zitat Zheng WL, Lu BL (2015) Investigating critical frequency bands and channels for EEG-based emotion recognition with deep neural networks[J]. IEEE Trans Auton Ment Dev 7(3):162–175CrossRef Zheng WL, Lu BL (2015) Investigating critical frequency bands and channels for EEG-based emotion recognition with deep neural networks[J]. IEEE Trans Auton Ment Dev 7(3):162–175CrossRef
Zurück zum Zitat Zheng WL, Liu W, Lu Y et al (2018) Emotionmeter: a multimodal framework for recognizing human emotions[J]. IEEE Trans Cybern 49(3):1110–1122CrossRefPubMed Zheng WL, Liu W, Lu Y et al (2018) Emotionmeter: a multimodal framework for recognizing human emotions[J]. IEEE Trans Cybern 49(3):1110–1122CrossRefPubMed
Zurück zum Zitat Zheng W L, Zhang Y Q, Zhu J Y, et al (2015) Transfer components between subjects for EEG-based emotion recognition[C]//2015 In: international conference on affective computing and intelligent interaction (ACII). IEEE, pp 917–922 Zheng W L, Zhang Y Q, Zhu J Y, et al (2015) Transfer components between subjects for EEG-based emotion recognition[C]//2015 In: international conference on affective computing and intelligent interaction (ACII). IEEE, pp 917–922
Zurück zum Zitat Zhou R, Zhang Z, Fu H, et al (2023) PR-PL: a novel prototypical representation based pairwise learning framework for emotion recognition using eeg signals[J]. IEEE Transactions on Affective Computing Zhou R, Zhang Z, Fu H, et al (2023) PR-PL: a novel prototypical representation based pairwise learning framework for emotion recognition using eeg signals[J]. IEEE Transactions on Affective Computing
Metadaten
Titel
Multiple-source distribution deep adaptive feature norm network for EEG emotion recognition
verfasst von
Lei Zhu
Fei Yu
Wangpan Ding
Aiai Huang
Nanjiao Ying
Jianhai Zhang
Publikationsdatum
18.03.2024
Verlag
Springer Netherlands
Erschienen in
Cognitive Neurodynamics
Print ISSN: 1871-4080
Elektronische ISSN: 1871-4099
DOI
https://doi.org/10.1007/s11571-024-10092-2

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