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Method for emotion recognition based on minimum classification error

机译:基于最小分类误差的情感识别方法

摘要

Disclosed herein is a method for emotion recognition based on a minimum classification error. In the method, a speaker's neutral emotion is extracted using a Gaussian mixture model (GMM), other emotions except the neutral emotion are classified using the Gaussian Mixture Model to which a discriminative weight for minimizing the loss function of a classification error for the feature vector for emotion recognition is applied. In the emotion recognition, the emotion recognition is performed by applying a discriminative weight evaluated using the Gaussian Mixture Model based on minimum classification error to feature vectors of the emotion classified with difficult, thereby enhancing the performance of emotion recognition.
机译:本文公开了一种基于最小分类误差的情感识别方法。在该方法中,使用高斯混合模型(GMM)提取说话者的中性情绪,使用高斯混合模型对除中性情绪以外的其他情绪进行分类,对判别权重进行最小化以使特征向量的分类误差的损失函数最小化用于情感识别。在情感识别中,通过将使用基于最小分类误差的高斯混合模型评估的判别权重应用于难以分类的情感的特征向量来执行情感识别,从而增强了情感识别的性能。

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