Visible to the public Speech Emotion Recognition Using Bagged Support Vector Machines

TitleSpeech Emotion Recognition Using Bagged Support Vector Machines
Publication TypeConference Paper
Year of Publication2022
AuthorsOmman, Bini, Eldho, Shallet Mary T
Conference Name2022 International Conference on Computing, Communication, Security and Intelligent Systems (IC3SIS)
Keywordscomposability, computational para linguistics, Databases, emotion recognition, Hidden Markov models, human computer interaction, human-computer interaction, Linguistics, Metrics, pubcrawl, resilience, Resiliency, Speech recognition, supply vector machines, Support vector machines
AbstractSpeech emotion popularity is one of the quite promising and thrilling issues in the area of human computer interaction. It has been studied and analysed over several decades. It's miles the technique of classifying or identifying emotions embedded inside the speech signal.Current challenges related to the speech emotion recognition when a single estimator is used is difficult to build and train using HMM and neural networks,Low detection accuracy,High computational power and time.In this work we executed emotion category on corpora -- the berlin emodb, and the ryerson audio-visible database of emotional speech and track (Ravdess). A mixture of spectral capabilities was extracted from them which changed into further processed and reduced to the specified function set. When compared to single estimators, ensemble learning has been shown to provide superior overall performance. We endorse a bagged ensemble model which consist of support vector machines with a gaussian kernel as a possible set of rules for the hassle handy. Inside the paper, ensemble studying algorithms constitute a dominant and state-of-the-art approach for acquiring maximum overall performance.
DOI10.1109/IC3SIS54991.2022.9885578
Citation Keyomman_speech_2022