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Deep convolutional recurrent neural network with attention mechanism for robust speech emotion recognition

机译:深度卷积经常性神经网络,具有鲁棒语音情感认代的注意机制

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摘要

We present a deep convolutional recurrent neural network for speech emotion recognition based on the log-Mel filterbank energies, where the convolutional layers are responsible for the discriminative feature learning. Based on the hypothesis that a better understanding of the internal configuration within an utterance would help reduce misclassification, we further propose a convolutional attention mechanism to learn the utterance structure relevant to the task. In addition, we quantitatively measure the performance gain contributed by each module in our model in order to characterize the nature of emotion expressed in speech. The experimental results on the eNTERFACE'05 emotion database validate our hypothesis and also demonstrate an absolute improvement by 4.62% compared to the state-of-the-art approach.
机译:我们为基于Log-Mel滤波器拦截能量的语音情感识别提供了深度卷积的复发性神经网络,其中卷积层负责鉴别特征学习。基于对话语内的内部配置更好地理解的假设有助于减少错误分类,我们进一步提出了一种卷积注意机制,以学习与任务相关的话语结构。此外,我们定量测量我们模型中每个模块所贡献的性能增益,以表征演讲中表达的情感性质。 Enterface'05情感数据库的实验结果验证了我们的假设,而且与最先进的方法相比,4.62%的绝对改善。

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