利用多特征堆叠和数据增强,通过深度学习提高语音情感识别能力

Khasyi Al Mukarram, M. A. Mukhlas, Amalia Zahra
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摘要

本研究在瑞尔森情感语音和歌曲视听数据库(RAVDESS)数据集上评估了数据增强对一维卷积神经网络(CNN)和变换器模型进行语音情感识别(SER)的效果。结果表明,数据增强对提高情感分类准确性有积极影响。为了增加数据的变化和克服类的不平衡,采用了噪声、音调、拉伸、移位和加速等技术。使用数据增强的一维 CNN 模型达到了 94.5% 的准确率,而使用数据增强的变压器模型的准确率更高,达到了 97.5%。这项研究通过使用数据增强和这些模型来提高 RAVDESS 数据集的分类准确率,有望为开发准确的情感识别方法提供更好的见解。进一步的研究可以探索更大、更多样化的数据集和其他模型方法。
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Enhancing speech emotion recognition with deep learning using multi-feature stacking and data augmentation
This study evaluates the effectiveness of data augmentation on 1D convolutional neural network (CNN) and transformer models for speech emotion recognition (SER) on the Ryerson audio-visual database of emotional speech and song (RAVDESS) dataset. The results show that data augmentation has a positive impact on improving emotion classification accuracy. Techniques such as noising, pitching, stretching, shifting, and speeding are applied to increase data variation and overcome class imbalance. The 1D CNN model with data augmentation achieved 94.5% accuracy, while the transformer model with data augmentation performed even better at 97.5%. This research is expected to contribute better insights for the development of accurate emotion recognition methods by using data augmentation with these models to improve classification accuracy on the RAVDESS dataset. Further research can explore larger and more diverse datasets and alternative model approaches.
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