2015 7th Conference on Information and Knowledge Technology (IKT) 2015
DOI: 10.1109/ikt.2015.7288756
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Persian speech emotion recognition

Abstract: Speech emotion recognition is one of the most challenging and the most interesting topics of the voice processing research in recent years. Performance enhancement and computational complexity mitigation are the subject matter of the current study. Current study proposes a speech emotion recognition method by employing HMM-based classifier and minimum number of features in the Persian language. Result illustrate the proposed method is able to recognizing eight emotional states of anger, happy, sadness, neutral… Show more

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Cited by 24 publications
(5 citation statements)
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“…Future developments could combine the proposed approach with approaches that use Mel coefficients to improve the efficiency of various SED tasks. In addition, IMF properties can be used in other speech languages such as sound persian phoneme articulation [90,91] or speech synthesis [92]. The analysis of IMF applicability in SED systems, considering varying levels of signal-to-noise ratios, is another suggested topic for future investigation.…”
Section: Discussionmentioning
confidence: 99%
“…Future developments could combine the proposed approach with approaches that use Mel coefficients to improve the efficiency of various SED tasks. In addition, IMF properties can be used in other speech languages such as sound persian phoneme articulation [90,91] or speech synthesis [92]. The analysis of IMF applicability in SED systems, considering varying levels of signal-to-noise ratios, is another suggested topic for future investigation.…”
Section: Discussionmentioning
confidence: 99%
“…SER has been an emerging field since few years. In literature, various foreign languages are explored by researchers, including Chinese SER with Deep Belief Network [11], Mandarin [12], Persian [13] using Hidden Markov Model with 79.50% performance accuracy, for Polish [14] using k-nearest neighbor, Linear Discriminant Analysis, with performance of 80%. Emotion recognition has been improved by combining feature selection approaches, ranking models, and Fourier parameter models, as well as validating the models against standardized existing speech datasets including CASIA, EMODB, EESDB, FAU Aibo and LDC [15]- [17].…”
Section: Speech Emotion Recognition Processmentioning
confidence: 99%
“…In this technique, the classifiers have been trained with known languages, but the testing has been done on unknown or never seen languages. [15] have worked on Persian speech emotion recognition, using Hidden Markov Model and have achieved an average accuracy of 79.50%. A novel method for speech emotion recognition has been proposed by [16], which is based on hidden factor analysis, in which the acoustic features are broken down into an emotion specific component and an emotion independent specific component, where later is adopted for classification with improved accuracy.…”
Section: Related Workmentioning
confidence: 99%