Tongxin xuebao (Dec 2017)

Study of emotion recognition based on fusion multi-modal bio-signal with SAE and LSTM recurrent neural network

  • You-jun LI,
  • Jia-jin HUANG,
  • Hai-yuan WANG,
  • Ning ZHONG

Journal volume & issue
Vol. 38
pp. 109 – 120

Abstract

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In order to achieve more accurate emotion recognition accuracy from multi-modal bio-signal features,a novel method to extract and fuse the signal with the stacked auto-encoder and LSTM recurrent neural networks was proposed.The stacked auto-encoder neural network was used to compress and fuse the features.The deep LSTM recurrent neural network was employed to classify the emotion states.The results present that the fused multi-modal features provide more useful information than single-modal features.The deep LSTM recurrent neural network achieves more accurate emotion classification results than other method.The highest accuracy rate is 0.792 6

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