--- license: cc-by-nc-sa-4.0 language: - en - de - zh - fr - nl - el - it - es - my - he - sv - fa - tr - ur library_name: transformers pipeline_tag: audio-classification tags: - Speech Emotion Recognition - SER - Transformer - HuBERT - PyTorch --- # **ExHuBERT: Enhancing HuBERT Through Block Extension and Fine-Tuning on 37 Emotion Datasets** Authors: Shahin Amiriparian, Filip Packań, Maurice Gerczuk, Björn W. Schuller Fine-tuned [**HuBERT Large**](https://huggingface.co/facebook/hubert-large-ls960-ft) on EmoSet++, comprising 37 datasets, totaling 150,907 samples and spanning a cumulative duration of 119.5 hours. The model is expecting a 3 second long raw waveform resampled to 16 kHz. The original 6 Ouput classes are combinations of low/high arousal and negative/neutral/positive valence. Further details are available in the corresponding [**paper**](https://arxiv.org/) **Note**: This model is for research purpose only. ### EmoSet++ subsets used for fine-tuning the model: | | | | | | | :---: | :---: | :---: | :---: | :---: | | ABC [[1]](#1)| AD [[2]](#2) | BES [[3]](#3) | CASIA [[4]](#4) | CVE [[5]](#5) | | Crema-D [[6]](#6)| DES [[7]](#) | DEMoS [[8]](#8) | EA-ACT [[9]](#9) | EA-BMW [[9]](#9) | | EA-WSJ [[9]](#9) | EMO-DB [[10]](#10) | EmoFilm [[11]](#11) | EmotiW-2014 [[12]](#12) | EMOVO [[13]](#13) | | eNTERFACE [[14]](#14) | ESD [[15]](#15) | EU-EmoSS [[16]](#16) | EU-EV [[17]](#17) | FAU Aibo [[18]](#18) | | GEMEP [[19]](#19) | GVESS [[20]](#20) | IEMOCAP [[21]](#21) | MES [[3]](#3) | MESD [[22]](#22) | | MELD [[23]](#23)| PPMMK [[2]](#2) | RAVDESS [[24]](#24) | SAVEE [[25]](#25) | ShEMO [[26]](#26) | | SmartKom [[27]](#27) | SIMIS [[28]](#28) | SUSAS [[29]](#29) | SUBSECO [[30]](#30) | TESS [[31]](#31) | | TurkishEmo [[2]](#2) | Urdu [[32]](#32) | | | | ### Usage ```python import torch import torch.nn as nn from transformers import AutoModelForAudioClassification, Wav2Vec2FeatureExtractor # CONFIG and MODEL SETUP model_name = 'amiriparian/ExHuBERT' feature_extractor = Wav2Vec2FeatureExtractor.from_pretrained("facebook/hubert-base-ls960") model = AutoModelForAudioClassification.from_pretrained(model_name, trust_remote_code=True,revision="b158d45ed8578432468f3ab8d46cbe5974380812") # Freezing half of the encoder model.freeze_og_encoder() sampling_rate=16000 device = torch.device("cuda" if torch.cuda.is_available() else "cpu") model = model.to(device) ``` ### Citation Info ``` @inproceedings{Amiriparian24-EEH, author = {Shahin Amiriparian and Filip Packan and Maurice Gerczuk and Bj\"orn W.\ Schuller}, title = {{ExHuBERT: Enhancing HuBERT Through Block Extension and Fine-Tuning on 37 Emotion Datasets}}, booktitle = {{Proc. INTERSPEECH}}, year = {2024}, editor = {}, volume = {}, series = {}, address = {Kos Island, Greece}, month = {September}, publisher = {ISCA}, } ``` ### References [1] B. Schuller, D. Arsic, G. Rigoll, M. Wimmer, and B. Radig. Audiovisual Behavior Modeling by Combined Feature Spaces. In 2007 IEEE International Conference on Acoustics, Speech and Signal Processing - ICASSP ’07, volume 2, pages II–733–II– 736, Apr. 2007. [2] M. Gerczuk, S. Amiriparian, S. Ottl, and B. W. Schuller. EmoNet: A Transfer Learning Framework for Multi-Corpus Speech Emotion Recognition. IEEE Trans- actions on Affective Computing, 14(2):1472–1487, Apr. 2023. [3] T. L. Nwe, S. W. Foo, and L. C. De Silva. Speech emotion recognition using hidden Markov models. Speech Communication, 41(4):603–623, Nov. 2003. [4] The selected speech emotion database of institute of automation chineseacademy of sciences (casia). http://www.chineseldc.org/resource_info.php?rid=76. accessed March 2024. [5] P. Liu and M. D. Pell. Recognizing vocal emotions in Mandarin Chinese: A val- idated database of Chinese vocal emotional stimuli. Behavior Research Methods, 44(4):1042–1051, Dec. 2012. [6] H. Cao, D. G. Cooper, M. K. Keutmann, R. C. Gur, A. Nenkova, and R. Verma. CREMA-D: Crowd-sourced Emotional Multimodal Actors Dataset. IEEE transactions on affective computing, 5(4):377–390, 2014. [7] I. S. Engberg, A. V. Hansen, O. K. Andersen, and P. Dalsgaard. Design Record- ing and Verification of a Danish Emotional Speech Database: Design Recording and Verification of a Danish Emotional Speech Database. EUROSPEECH’97 : 5th European Conference on Speech Communication and Technology, Patras, Rhodes, Greece, 22-25 September 1997, pages Vol. 4, pp. 1695–1698, 1997. [8] E. Parada-Cabaleiro, G. Costantini, A. Batliner, M. Schmitt, and B. W. Schuller. DEMoS: An Italian emotional speech corpus. Language Resources and Evaluation, 54(2):341–383, June 2020. [9] B. Schuller. Automatische Emotionserkennung Aus Sprachlicher Und Manueller Interaktion. PhD thesis, Technische Universit¨at M¨unchen, 2006. [10] F. Burkhardt, A. Paeschke, M. Rolfes, W. F. Sendlmeier, and B. Weiss. A database of German emotional speech. In Interspeech 2005, pages 1517–1520. ISCA, Sept. 2005. [11] E. Parada-Cabaleiro, G. Costantini, A. Batliner, A. Baird, and B. Schuller. Categorical vs Dimensional Perception of Italian Emotional Speech. In Interspeech 2018, pages 3638–3642. ISCA, Sept. 2018. [12] A. Dhall, R. Goecke, J. Joshi, K. Sikka, and T. Gedeon. Emotion Recognition In The Wild Challenge 2014: Baseline, Data and Protocol. In Proceedings of the 16th International Conference on Multimodal Interaction, ICMI ’14, pages 461–466, New York, NY, USA, Nov. 2014. Association for Computing Machinery. [13] G. Costantini, I. Iaderola, A. Paoloni, and M. Todisco. EMOVO Corpus: An Italian Emotional Speech Database. In N. Calzolari, K. Choukri, T. Declerck, H. Loftsson, B. Maegaard, J. Mariani, A. Moreno, J. Odijk, and S. Piperidis, editors, Proceed- ings of the Ninth International Conference on Language Resources and Evaluation (LREC’14), pages 3501–3504, Reykjavik, Iceland, May 2014. European Language Resources Association (ELRA). [14] O. Martin, I. Kotsia, B. Macq, and I. Pitas. The eNTERFACE’ 05 Audio-Visual Emotion Database. In 22nd International Conference on Data Engineering Work- shops (ICDEW’06), pages 8–8, Apr. 2006. [15] K. Zhou, B. Sisman, R. Liu, and H. Li. Seen and Unseen emotional style transfer for voice conversion with a new emotional speech dataset, Feb. 2021. [16] H. O’Reilly, D. Pigat, S. Fridenson, S. Berggren, S. Tal, O. Golan, S. B¨olte, S. Baron- Cohen, and D. Lundqvist. The EU-Emotion Stimulus Set: A validation study. Behavior Research Methods, 48(2):567–576, June 2016. [17] A. Lassalle, D. Pigat, H. O’Reilly, S. Berggen, S. Fridenson-Hayo, S. Tal, S. Elfstr¨om, A. R˚ade, O. Golan, S. B¨olte, S. Baron-Cohen, and D. Lundqvist. The EU-Emotion Voice Database. Behavior Research Methods, 51(2):493–506, Apr. 2019. [18] A. Batliner, S. Steidl, and E. Noth. Releasing a thoroughly annotated and processed spontaneous emotional database: The FAU Aibo Emotion Corpus. 2008. [19] K. R. Scherer, T. B¨anziger, and E. Roesch. A Blueprint for Affective Computing: A Sourcebook and Manual. OUP Oxford, Sept. 2010. [20] R. Banse and K. R. Scherer. Acoustic profiles in vocal emotion expression. Journal of Personality and Social Psychology, 70(3):614–636, 1996. [21] C. Busso, M. Bulut, C.-C. Lee, A. Kazemzadeh, E. Mower, S. Kim, J. N. Chang, S. Lee, and S. S. Narayanan. IEMOCAP: Interactive emotional dyadic motion capture database. Language Resources and Evaluation, 42(4):335–359, Dec. 2008. [22] M. M. Duville, L. M. Alonso-Valerdi, and D. I. Ibarra-Zarate. The Mexican Emo- tional Speech Database (MESD): Elaboration and assessment based on machine learning. Annual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE Engineering in Medicine and Biology Society. Annual International Conference, 2021:1644–1647, Nov. 2021. [23] S. Poria, D. Hazarika, N. Majumder, G. Naik, E. Cambria, and R. Mihalcea. MELD: A Multimodal Multi-Party Dataset for Emotion Recognition in Conversations, June 2019. [24] S. R. Livingstone and F. A. Russo. The Ryerson Audio-Visual Database of Emo- tional Speech and Song (RAVDESS): A dynamic, multimodal set of facial and vocal expressions in North American English. PLOS ONE, 13(5):e0196391, May 2018. [25] S. Haq and P. J. B. Jackson. Speaker-dependent audio-visual emotion recognition. In Proc. AVSP 2009, pages 53–58, 2009. [26] O. Mohamad Nezami, P. Jamshid Lou, and M. Karami. ShEMO: A large-scale validated database for Persian speech emotion detection. Language Resources and Evaluation, 53(1):1–16, Mar. 2019. [27] F. Schiel, S. Steininger, and U. T¨urk. The SmartKom Multimodal Corpus at BAS. In M. Gonz´alez Rodr´ıguez and C. P. Suarez Araujo, editors, Proceedings of the Third International Conference on Language Resources and Evaluation (LREC’02), Las Palmas, Canary Islands - Spain, May 2002. European Language Resources Association (ELRA). [28] B. Schuller, F. Eyben, S. Can, and H. Feußner. Speech in Minimal Invasive Surgery - Towards an Affective Language Resource of Real-life Medical Operations. 2010. [29] J. H. L. Hansen and S. E. Bou-Ghazale. Getting started with SUSAS: A speech under simulated and actual stress database. In Proc. Eurospeech 1997, pages 1743–1746, 1997. [30] S. Sultana, M. S. Rahman, M. R. Selim, and M. Z. Iqbal. SUST Bangla Emotional Speech Corpus (SUBESCO): An audio-only emotional speech corpus for Bangla. PLOS ONE, 16(4):e0250173, Apr. 2021. [31] M. K. Pichora-Fuller and K. Dupuis. Toronto emotional speech set (TESS), Feb. 2020. [32] S. Latif, A. Qayyum, M. Usman, and J. Qadir. Cross Lingual Speech Emotion Recognition: Urdu vs. Western Languages. In 2018 International Conference on Frontiers of Information Technology (FIT), pages 88–93, Dec. 2018.