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On the Effects of Speaker Gender in Emotion Recognition Training Data

机译:论扬声器性别在情感识别训练数据中的影响

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Research of gender effects in the field of automatic speech emotion recognition (SER) has been subject to research in the past. Still, however, it is somewhat unclear to which degree speaker gender influences SER. Although we will prove it to be wrong for our SER model, usually it is assumed that a "gender-dependent" emotion recognizer performs better than a "gender-independent" one by using gender-dependent emotional speech training data. In this paper, we use a state-of-the-art emotion recognizer model to investigate the effects of speaker genders in training and in test. The gender-specific SER model performs well under matched-gender test conditions, as expected. Training with approximate half the amount of the training data from male and female speakers jointly, is about as good as separate training using gender-specific data and test in matched conditions with in total the same amount of training data. This however, only holds for an average over male and female speakers: Interestingly, we show that female voices emotions are recognized better on a mixed-gender SER model, than on a female SER model, indicating that female speakers express emotions in a wider variety than male speakers?
机译:自动演讲情感认展(SER)领域的性别效应研究已在过去的研究。然而,仍然仍然不清楚哪些学位扬声器性别影响SER。虽然我们将为我们的Ser模型证明是错误的,但通常假设通过使用性别依赖的情绪语音训练数据,“性别依赖性”情感识别器比“性别无关”更好地执行。在本文中,我们使用最先进的情感识别器模型来调查扬声器性别在培训和测试中的影响。正如预期的那样,性别特异性SER模型在匹配性别测试条件下表现出良好。培训具有联合男性和女性扬声器的培训数据量的培训与使用性别特定数据和在匹配条件下进行的单独培训以及总共相同的培训数据进行测试。然而,只有在男性和女性扬声器平均持有平均:有趣的是,我们表明女性的声音在混合性别Ser模型上识别出比在雌性Ser模型上更好,表明女性扬声器表达更广泛的情绪比男性扬声器?

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