Speaker identification investigation and analysis in Two distinct emotional talking environments

I. Shahin
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引用次数: 1

Abstract

The focus of this work is to investigate and analyze speaker identification in two different emotional talking environments based on a well-known classifier called Hidden Markov Models (HMMs). The first talking environment is unbiased towards any emotional state, while the second one is biased towards different emotional states. Each talking environment is comprised of six distinct emotions. The six emotions are neutral, angry, sad, happy, disgust, and fear. Our investigation and analysis in this work show that speaker identification performance in the second talking environment is superior to that in the first one. The results achieved in the current work are close to those obtained in subjective assessment by human judges.
两种不同情绪谈话环境下说话人识别的调查与分析
本研究的重点是基于隐马尔可夫模型(hmm)来研究和分析两种不同情绪谈话环境下的说话人识别。第一种谈话环境不偏向于任何情绪状态,而第二种谈话环境则偏向于不同的情绪状态。每个谈话环境都由六种不同的情绪组成。这六种情绪是中性的:愤怒、悲伤、快乐、厌恶和恐惧。本研究的调查和分析表明,第二种说话环境下的说话人识别性能优于第一种说话环境。目前所取得的结果接近于人类法官主观评价的结果。
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