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Detection of Emotion of Speech for RAVDESS Audio Using Hybrid Convolution Neural Network

2022· article· en· 45 citations· W4214505042 sur OpenAlex· 10.1155/2022/8472947

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Dossier post-publication

Nature
Retraction
Motif
Concerns/Issues about Data;Concerns/Issues about Results and/or Conclusions;Concerns/Issues about Referencing/Attributions;Concerns/Issues about Peer Review;Investigation by Journal/Publisher;Investigation by Third Party;Paper Mill;Computer-Aided Content or Computer-Generated Content;Unreliable Results and/or Conclusions;
Date
11/1/2023 0:00
Signalé par OpenAlex ?
Oui

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Résumé

Every human being has emotion for every item related to them. For every customer, their emotion can help the customer representative to understand their requirement. So, speech emotion recognition plays an important role in the interaction between humans. Now, the intelligent system can help to improve the performance for which we design the convolution neural network (CNN) based network that can classify emotions in different categories like positive, negative, or more specific. In this paper, we use the Ryerson Audio-Visual Database of Emotional Speech and Song (RAVDESS) audio records. The Log Mel Spectrogram and Mel-Frequency Cepstral Coefficients (MFCCs) were used to feature the raw audio file. These properties were used in the classification of emotions using techniques, such as Long Short-Term Memory (LSTM), CNNs, Hidden Markov models (HMMs), and Deep Neural Networks (DNNs). For this paper, we have divided the emotions into three sections for males and females. In the first section, we divide the emotion into two classes as positive. In the second section, we divide the emotion into three classes such as positive, negative, and neutral. In the third section, we divide the emotions into 8 different classes such as happy, sad, angry, fearful, surprise, disgust expressions, calm, and fearful emotions. For these three sections, we proposed the model which contains the eight consecutive layers of the 2D convolution neural method. The purposed model gives the better-performed categories to other previously given models. Now, we can identify the emotion of the consumer in better ways.

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La notice

Revue
Journal of Healthcare Engineering
Thématique
Emotion and Mood Recognition
Domaine
Psychology
Établissements canadiens
Organismes subventionnaires
Mots-clés
DisgustComputer scienceSpeech recognitionSurpriseSpectrogramConvolutional neural networkArtificial neural networkHidden Markov modelMel-frequency cepstrumEmotion classificationArtificial intelligenceNatural language processingFeature extractionPsychologyCommunication
Résumé présent dans OpenAlex
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