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Design of Neural Network Model for Emotional Speech Recognition

机译:情绪语音识别神经网络模型的设计

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Human–computer interaction (HCI) needs to be improved for the field of recognition and detection. Exclusively, the emotion recognition has major impact on social, engineering, and medical science applications. This paper presents an approach for emotion recognition of emotional speech based on neural network. Linear predictive coefficients and radial basis function network are used as features and classification techniques, respectively, for emotion recognition. Results reveal that the approach is effective in recognition of human speech emotions. Speech utterances are directly extracted from audio channel including background noise. Totally, 75 utterances from 05 speakers were collected based on five emotion categories. Fifteen utterances have been considered for training and rest are for test. The proposed approach has been tested and verified for newly developed dataset.
机译:需要改善人机交互(HCI)对识别和检测领域。专门,情感认可对社会,工程和医学应用产生了重大影响。本文提出了一种基于神经网络的情感识别情感认知方法。线性预测系数和径向基函数网络分别用作情感识别的特征和分类技术。结果表明,该方法有效地识别人类语音情绪。语音发声直接从包括背景噪声的音频通道中提取。完全,根据五种情感类别收集来自05个扬声器的75个话语。已经考虑了十五条话语进行培训和休息是用于测试。已对新开发的数据集进行了测试和验证了所提出的方法。

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