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Employing Emotion Cues to Verify Speakers in Emotional Talking Environments

机译:利用情感提示来验证情感谈话环境中的说话者

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摘要

Usually, people talk neutrally in environments where there are no abnormal talking conditions such as stress and emotion. Other emotional conditions that might affect people's talking tone include happiness, anger, and sadness. Such emotions are directly affected by the patient's health status. In neutral talking environments, speakers can be easily verified; however, in emotional talking environments, speakers cannot be easily verified as in neutral talking ones. Consequently, speaker verification systems do not perform well in emotional talking environments as they do in neutral talking environments. In this work, a two-stage approach has been employed and evaluated to improve speaker verification performance in emotional talking environments. This approach employs speaker's emotion cues (text-independent and emotion-dependent speaker verification problem) based on both hidden Markov models (HMMs) and suprasegmental HMMs as classifiers. The approach is composed of two cascaded stages that combine and integrate an emotion recognizer and a speaker recognizer into one recognizer. The architecture has been tested on two different and separate emotional speech databases: our collected database and the Emotional Prosody Speech and Transcripts database. The results of this work show that the proposed approach gives promising results with a significant improvement over previous studies and other approaches such as emotion-independent speaker verification approach and emotion-dependent speaker verification approach based completely on HMMs.
机译:通常,人们在没有异常说话条件(例如压力和情感)的环境中保持中立的说话。其他可能影响人们说话语气的情绪条件包括幸福,愤怒和悲伤。这种情绪直接受到患者健康状况的影响。在中立的谈话环境中,可以轻松验证扬声器。但是,在情绪化的谈话环境中,说话者无法像在中性谈话中那样容易地得到验证。因此,说话者验证系统在情感谈话环境中的表现不如在中性谈话环境中的表现良好。在这项工作中,采用了两阶段方法并对其进行了评估,以提高情感交流环境中的说话者验证性能。该方法基于隐藏的马尔可夫模型(HMM)和超节段HMM来采用说话人的情绪线索(与文本无关和与情绪有关的说话人验证问题)作为分类器。该方法由两个级联的阶段组成,这些阶段将情感识别器和说话者识别器组合并集成到一个识别器中。该架构已在两个不同的独立情感语音数据库上进行了测试:我们收集的数据库以及情感韵律语音和笔录数据库。这项工作的结果表明,所提出的方法与以前的研究和其他方法(例如完全基于HMM的与情感无关的说话者验证方法和与情感无关的说话者验证方法)相比,在先前的研究和其他方法上均取得了令人瞩目的结果,并且具有显着改进。

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