A Survey Paper on Speech Recognition System with Improved CLDNN Structure

Authors

  • Harshal Jagannath Jaware  Department of Computer Engineering (Data Science), Zeal College of Engineering and Research, Narhe, Pune, Savitribai Phule Pune University, Pune, Maharashtra, India

Keywords:

Abstract

In the field of end-to-end speech recognition technology based on deep learning, CLDNN (Convolutional Long Short-Term Memory Fully Connected Deep Neural Network) is a commonly used model structure. The fully connected LSTM (Long Short Term Memory) model is used in the traditional CLDNN structure to process the timing information in the speech signal, which is prone to overfitting during the training process and affects the learning effect. Deeper models tend to perform better, but increasing the model depth by Simply stacking the network layers can cause gradient disappearance, gradient explosion, and "degeneration" problems. Aiming at the above phenomena and problems, this paper proposes an improved CLDNN structure. It combines the residual network and ConvLSTM to establish the residual ConvLSTM model, and replaces the fully connected LSTM model in the traditional CLDNN structure. The model structure solves the problems of the traditional CLDNN model, and can increase the model depth by stacking residual ConvLSTM blocks without gradient disappearance, gradient explosion and degeneration problems, which makes the speech recognition system perform better. The experimental results show that the model structure has a word error rate (WER) decrease of more than 8% in both Chinese and English speech recognition tasks compared to the traditional CLDNN structure.

References

  1. Siniscalchi S M, Yu D, Deng L, et al. “Exploiting Deep Neural Networks for Speech Recognition”. Neurocomputing, 2013, 106(12): 148-157
  2. Yang Y, Wang Y. “Speech recognition based on improved convolutional neural network algorithm”. Journal of Applied Acoustics, 2018, 37(06) : 1-7.
  3. Li H, Jian S, Xu Z, et al. “Multimodal 2D+3D Facial Expression Recognition With Deep Fusion Convolutional Neural Network”. IEEE Transactions on Multimedia, 2017, 19(12):1-1
  4. Xingjian S H I , Chen Z, Wang H, et al. “Convolutional LSTM network: A machine learning approach for precipitation nowcasting Advances in neural information processing systems”. 2015: 802-810.
  5. Hannun A, Case C, Casper J, et al. “Deep speech: Scaling up end-to-end speech recognition International Conference on Machine Learning.” 2014.
  6. Graves A, Jaitly N. “Towards End-To-End Speech Recognition with Recurrent Neural Networks International Conference on Machine Learning”. 2014.

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Published

2022-04-30

Issue

Section

Research Articles

How to Cite

[1]
Harshal Jagannath Jaware "A Survey Paper on Speech Recognition System with Improved CLDNN Structure" International Journal of Scientific Research in Science and Technology(IJSRST), Online ISSN : 2395-602X, Print ISSN : 2395-6011,Volume 9, Issue 2, pp.529-534, March-April-2022.