Publication | Open Access
The Impact of Attention Mechanisms on Speech Emotion Recognition
34
Citations
18
References
2021
Year
Attention MechanismsMachine LearningEngineeringNeurolinguisticsAffective NeuroscienceSpoken Language ProcessingAttentionRecurrent Neural NetworkPsychologySocial SciencesEmotional ResponseSpeech RecognitionData ScienceAffective ComputingAttention MechanismAutomatic RecognitionCognitive ScienceSpeech Emotion RecognitionSer Classification ConstructionComputer ScienceDeep LearningSpeech CommunicationSpeech AnalysisSpeech ProcessingSpeech InputParalinguisticsSpeech PerceptionEmotionEmotion Recognition
Speech emotion recognition (SER) plays an important role in real-time applications of human-machine interaction. The Attention Mechanism is widely used to improve the performance of SER. However, the applicable rules of attention mechanism are not deeply discussed. This paper discussed the difference between Global-Attention and Self-Attention and explored their applicable rules to SER classification construction. The experimental results show that the Global-Attention can improve the accuracy of the sequential model, while the Self-Attention can improve the accuracy of the parallel model when conducting the model with the CNN and the LSTM. With this knowledge, a classifier (CNN-LSTM×2+Global-Attention model) for SER is proposed. The experiments result show that it could achieve an accuracy of 85.427% on the EMO-DB dataset.
| Year | Citations | |
|---|---|---|
Page 1
Page 1