Publication | Closed Access
Emotion recognition from spontaneous speech using Hidden Markov models with deep belief networks
117
Citations
32
References
2013
Year
Unknown Venue
EngineeringMachine LearningDeep Belief NetworksMultimodal Sentiment AnalysisSocial SciencesSpeech RecognitionData SciencePattern RecognitionAffective ComputingFeature LearningFau AiboComputer ScienceDeep LearningBenchmark DatasetEmotionSpeech CommunicationSpeech AnalysisFacial Expression RecognitionSpeech ProcessingSpeech InputSpeech PerceptionHidden Markov ModelsEmotion Recognition
Research in emotion recognition seeks to develop insights into the temporal properties of emotion. However, automatic emotion recognition from spontaneous speech is challenging due to non-ideal recording conditions and highly ambiguous ground truth labels. Further, emotion recognition systems typically work with noisy high-dimensional data, rendering it difficult to find representative features and train an effective classifier. We tackle this problem by using Deep Belief Networks, which can model complex and non-linear high-level relationships between low-level features. We propose and evaluate a suite of hybrid classifiers based on Hidden Markov Models and Deep Belief Networks. We achieve state-of-the-art results on FAU Aibo, a benchmark dataset in emotion recognition [1]. Our work provides insights into important similarities and differences between speech and emotion.
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