Search results

Filters

  • Journals
  • Authors
  • Keywords
  • Date
  • Type

Search results

Number of results: 1
items per page: 25 50 75
Sort by:
Download PDF Download RIS Download Bibtex

Abstract

Speech emotion recognition (SER) is a complicated and challenging task in the human-computer interaction because it is difficult to find the best feature set to discriminate the emotional state entirely. We always used the FFT to handle the raw signal in the process of extracting the low-level description features, such as short-time energy, fundamental frequency, formant, MFCC (mel frequency cepstral coefficient) and so on. However, these features are built on the domain of frequency and ignore the information from temporal domain. In this paper, we propose a novel framework that utilizes multi-layers wavelet sequence set from wavelet packet reconstruction (WPR) and conventional feature set to constitute mixed feature set for achieving the emotional recognition with recurrent neural networks (RNN) based on the attention mechanism. In addition, the silent frames have a disadvantageous effect on SER, so we adopt voice activity detection of autocorrelation function to eliminate the emotional irrelevant frames. We show that the application of proposed algorithm significantly outperforms traditional features set in the prediction of spontaneous emotional states on the IEMOCAP corpus and EMODB database respectively, and we achieve better classification for both speaker-independent and speaker-dependent experiment. It is noteworthy that we acquire 62.52% and 77.57% accuracy results with speaker-independent (SI) performance, 66.90% and 82.26% accuracy results with speaker-dependent (SD) experiment in final.
Go to article

Bibliography

  1.  M. Gupta, et al., “Emotion recognition from speech using wavelet packet transform and prosodic features”, J. Intell. Fuzzy Syst. 35, 1541–1553 (2018).
  2.  M. El Ayadi, et al., “Survey on speech emotion recognition: Features, classification schemes, and databases”, Pattern Recognit. 44, 572–587 (2011).
  3.  P. Tzirakis, et al., “End-to-end speech emotion recognition using deep neural networks”, 2018 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP), Calgary, Canada, 2018, pp. 5089‒5093, doi: 10.1109/ICASSP.2018.8462677.
  4.  J.M Liu, et al., “Learning Salient Features for Speech Emotion Recognition Using CNN”, 2018 First Asian Conference on Affective Computing and Intelligent Interaction (ACII Asia), Beijing, China, 2018, pp. 1‒5, doi: 10.1109/ACIIAsia.2018.8470393.
  5.  J. Kim, et al., “Learning spectro-temporal features with 3D CNNs for speech emotion recognition”, 2017 Seventh International Conference on Affective Computing and Intelligent Interaction (ACII), San Antonio, USA, 2017, pp. 383‒388, doi: 10.1109/ACII.2017.8273628.
  6.  M.Y Chen, X.J He, et al., “3-D Convolutional Recurrent Neural Networks with Attention Model for Speech Emotion Recognition”, IEEE Signal Process Lett. 25(10), 1440‒1444 (2018), doi: 10.1109/LSP.2018.2860246.
  7.  V.N. Degaonkar and S.D. Apte, “Emotion modeling from speech signal based on wavelet packet transform”, Int. J. Speech Technol. 16, 1‒5 (2013).
  8.  T. Feng and S. Yang, “Speech Emotion Recognition Based on LSTM and Mel Scale Wavelet Packet Decomposition”, Proceedings of the 2018 International Conference on Algorithms, Computing and Artificial Intelligence (ACAI 2018), New York, USA, 2018, art. 38.
  9.  P. Yenigalla, A. Kumar, et. al”, Speech Emotion Recognition Using Spectrogram & Phoneme Embedding Promod”, Proc. Interspeech 2018, 2018, pp. 3688‒3692, doi: 10.21437/Interspeech.2018-1811.
  10.  J. Kim, K.P. Truong, G. Englebienne, and V. Evers, “Learning spectro-temporal features with 3D CNNs for speech emotion recognition”, 2017 Seventh International Conference on Affective Computing and Intelligent Interaction (ACII), San Antonio, USA, 2017, pp. 383‒388, doi: 10.1109/ACII.2017.8273628.
  11.  S. Jing, X. Mao, and L. Chen, “Prominence features: Effective emotional features for speech emotion recognition”, Digital Signal Process. 72, 216‒231 (2018).
  12.  L. Chen, X. Mao, P. Wei, and A. Compare, “Speech emotional features extraction based on electroglottograph”, Neural Comput. 25(12), 3294–3317 (2013).
  13.  J. Hook, et al., “Automatic speech based emotion recognition using paralinguistics features”, Bull. Pol. Ac.: Tech. 67(3), 479‒488, 2019.
  14.  A. Mencattini, E. Martinelli, G. Costantini, M. Todisco, B. Basile, M. Bozzali, and C. Di Natale, “Speech emotion recognition using amplitude modulation parameters and a combined feature selection procedure”, Knowl.-Based Syst. 63, 68–81 (2014).
  15.  H. Mori, T. Satake, M. Nakamura, and H. Kasuya, “Constructing a spoken dialogue corpus for studying paralinguistic information in expressive conversation and analyzing its statistical/acoustic characteristics”, Speech Commun. 53(1), 36–50 (2011).
  16.  B. Schuller, S. Steidl, A. Batliner, F. Burkhardt, L. Devillers, C. Müller, and S. Narayanan, “Paralinguistics in speech and language—state- of-the-art and the challenge”, Comput. Speech Lang. 27(1), 4–39 (2013).
  17.  S. Mariooryad and C. Busso, “Compensating for speaker or lexical variabilities in speech for emotion recognition”, Speech Commun. 57, 1–12 (2014).
  18.  G.Trigeorgis et.al, “Adieu features? End-to-end speech emotion recognition using a deep convolutional recurrent network”, 2016 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP), Shanghai, China, 2016, pp. 5200‒5204, doi: 10.1109/ ICASSP.2016.7472669.
  19.  Y. Xie et.al, “Attention-based dense LSTM for speech emotion recognition”, IEICE Trans. Inf. Syst. E102.D, 1426‒1429 (2019).
  20.  F. Tao and G.Liu, “Advanced LSTM: A Study about Better Time Dependency Modeling in Emotion Recognition”, 2018 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP), Calgary, Canada, 2018, pp. 2906‒2910, doi: 10.1109/ ICASSP.2018.8461750.
  21.  Y.M. Huang and W. Ao, “Novel Sub-band Spectral Centroid Weighted Wavelet Packet Features with Importance-Weighted Support Vector Machines for Robust Speech Emotion Recognition”, Wireless Personal Commun. 95, 2223–2238 (2017).
  22.  Firoz Shah A. and Babu Anto P., “Wavelet Packets for Speech Emotion Recognition”, 2017 Third International Conference on Advances in Electrical, Electronics, Information, Communication and Bio-Informatics (AEEICB), Chennai, 2017, pp. 479‒481, doi: 10.1109/ AEEICB.2017.7972358.
  23.  K.Wang, N. An, and L. Li, “Speech Emotion Recognition Based on Wavelet Packet Coefficient Model”, The 9th International Symposium on Chinese Spoken Language Processing, Singapore, China, 2014, pp. 478‒482, doi: 10.1109/ISCSLP.2014.6936710.
  24.  S. Sekkate, et al., “An Investigation of a Feature-Level Fusion for Noisy Speech Emotion Recognition”, Computers 8, 91 (2019).
  25.  Varsha N. Degaonkar and Shaila D. Apte, “Emotion Modeling from Speech Signal based on Wavelet Packet Transform”, Int. J. Speech Technol. 16, 1–5 (2013).
  26.  F. Eyben, et al., “Opensmile: the munich versatile and fast open-source audio feature extractor”, MM ’10: Proceedings of the 18th ACM international conference on Multimedia, 2010, pp. 1459‒1462.
  27.  Ch.-N. Anagnostopoulos, T. Iliou, and I. Giannoukos, “Features and classifiers for emotion recognition from speech: a survey from 2000 to 2011,” Artif. Intell. 43(2), 155–177 (2015).
  28.  H. Meng, T. Yan, F. Yuan, and H. Wei, “Speech Emotion Recognition From 3D Log-Mel SpectrogramsWith Deep Learning Network”, IEEE Access 7, 125868‒125881 (2019).
  29.  Keren, Gil and B. Schuller. “Convolutional RNN: An enhanced model for extracting features from sequential data,” International Joint Conference on Neural Networks, 2016, pp. 3412‒3419.
  30.  C.W. Huang and S.S. Narayanan, “Deep convolutional recurrent neural network with attention mechanism for robust speech emotion recognition”, IEEE International Conference on Multimedia and Expo (ICME), Hong Kong, 2017, pp. 583‒588, doi: 10.1109/ ICME.2017.8019296.
  31.  S. Mirsamadi, E. Barsoum, and C. Zhang, “Automatic Speech Emotion Recognition using Recurrent Neural Networks with Local Attention”, 2017 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP), New Orleans, USA, 2017, pp. 2227- 2231, doi: 10.1109/ICASSP.2017.7952552.
  32.  Ashish Vaswani, et al., “Attention Is All You Need”, 31st Conference on Neural Information Processing Systems (NIPS 2017), Long Beach, USA, 2017.
  33.  X.J Wang, et al., “Dynamic Attention Deep Model for Article Recommendation by Learning Human Editors’ Demonstration”, Proceedings of the 23rd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, Halifax, Canada, 2017.
  34.  C. Busso, et al., “IEMOCAP: interactive emotional dyadic motion capture database,” Language Resources & Evaluation 42(4), 335 (2008).
  35.  F. Burkhardt, A. Paeschke, M. Rolfes, W.F. Sendlmeier, and B.Weiss, “A database of German emotional speech,” INTERSPEECH 2005 – Eurospeech, Lisbon, Portugal, 2005, pp. 1517‒1520.
  36.  D. Kingma and J. Ba, “International Conference on Learning Representations (ICLR)”, ICLR, San Diego, USA, 2015.
  37.  F. Vuckovic, G. Lauc, and Y. Aulchenko. “Normalization and batch correction methods for high-throughput glycomics”, Joint Meeting of the Society-For-Glycobiology 2016, pp. 1160‒1161.
Go to article

Authors and Affiliations

Hao Meng
1
Tianhao Yan
1
Hongwei Wei
1
Xun Ji
2

  1. Key laboratory of Intelligent Technology and Application of Marine Equipment (Harbin Engineering University), Ministry of Education, Harbin, 150001, China
  2. College of Marine Electrical Engineering, Dalian Maritime University, Dalian, 116026, China

This page uses 'cookies'. Learn more