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Generating and Protecting Against Adversarial Attacks for Deep Speech-Based Emotion Recognition Models

机译:基于深度语音的情感识别模型的生成和防御对抗攻击

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The development of deep learning models for speech emotion recognition has become a popular area of research. Adversarially generated data can cause false predictions, and in an endeavor to ensure model robustness, defense methods against such attacks should be addressed. With this in mind, in this study, we aim to train deep models to defending against non-targeted white-box adversarial attacks. Adversarial data is first generated from the real data using the fast gradient sign method. Then in the research field of speech emotion recognition, adversarial-based training is employed as a method for protecting against adversarial attack. We then train deep convolutional models with both real and adversarial data, and compare the performances of two adversarial training procedures - namely, vanilla adversarial training, and similarity-based adversarial training. In our experiments, through the use of adversarial data augmentation, both of the considered adversarial training procedures can improve the performance when validated on the real data. Additionally, the similarity-based adversarial training learns a more robust model when working with adversarial data. Finally, the considered VGG-16 model performs the best across all models, for both real and generated data.
机译:用于语音情感识别的深度学习模型的开发已成为研究的热门领域。对抗性生成的数据可能会导致错误的预测,并且在确保模型稳健性的过程中,应对此类攻击的防御方法应得到解决。考虑到这一点,在本研究中,我们旨在训练深度模型以防御非目标白盒对抗攻击。首先使用快速梯度符号方法从真实数据生成对抗数据。然后在语音情感识别的研究领域中,采用基于对抗的训练作为防御对抗攻击的方法。然后,我们使用真实和对抗数据训练深度卷积模型,并比较两种对抗训练程序(即香草对抗训练和基于相似度的对抗训练)的性能。在我们的实验中,通过使用对抗性数据增强,当在真实数据上进行验证时,两种考虑的对抗性训练程序都可以提高性能。此外,在使用对抗性数据时,基于相似度的对抗性训练会学习更强大的模型。最后,考虑到的VGG-16模型在所有模型中对于真实数据和生成数据均表现最佳。

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