A Pattern Mining Approach in Feature Extraction for Emotion Recognition from Speech

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Date

2019

Authors

Umut Avci
Gamze Akkurt
Devrim Unay

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SPRINGER INTERNATIONAL PUBLISHING AG

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Green Open Access

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Abstract

We address the problem of recognizing emotions from speech using features derived from emotional patterns. Because much work in the field focuses on using low-level acoustic features we explicitly study whether high-level features are useful for classifying emotions. For this purpose we convert a continuous speech signal to a discretized signal and extract discriminative patterns that are capable of distinguishing distinct emotions from each other. Extracted patterns are then used to create a feature set to be fed into a classifier. Experimental results show that patterns alone are good predictors of emotions. When used to build a classifier pattern features achieve accuracy gains up to 25% compared to state-of-the-art acoustic features.

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Emotion recognition, Speech processing, Pattern mining, Feature extraction

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1

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21st International Conference on Speech and Computer (SPECOM)

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