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Confidence Measures in Speech Emotion Recognition Based on Semi-supervised Learning

机译:基于半监督学习的语音情感识别置信度

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Even though the accuracy of predictions made by speech emotion recognition (SER) systems is increasing in precision, little is known about the confidence of the predictions. To shed some light on this, we propose a confidence measure for SER systems based on semi-supervised learning. During the semi-supervised learning procedure, five frequently used databases with manually created confidence labels are implemented to train classifiers. When the SER system predicts the label for an unknown test utterance, these classifiers serve as a reliability estimator for the utterance and output a series of confidence ratios that are combined into a single confidence measure. Our experimental results impressively show that the proposed confidence measure is effective in indicating how much we can trust the predicted emotion.
机译:即使语音情感识别(SER)系统做出的预测的准确性在提高,但对预测的置信度知之甚少。为了阐明这一点,我们提出了一种基于半监督学习的SER系统的置信度度量。在半监督学习过程中,实现了五个经常使用的具有手动创建的置信度标签的数据库来训练分类器。当SER系统为未知的测试话语预测标签时,这些分类器将用作话语的可靠性估计器,并输出一系列置信度比,这些置信度比被合并为一个置信度度量。我们的实验结果令人印象深刻地表明,所提出的置信度度量可以有效地表明我们对预测的情感有多信任。

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