Do You Remember? Overcoming Catastrophic Forgetting for Fake Audio Detection

Xiaohui Zhang, Jiangyan Yi, J. Tao, Chenglong Wang, Chuyuan Zhang
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引用次数: 2

Abstract

Current fake audio detection algorithms have achieved promising performances on most datasets. However, their performance may be significantly degraded when dealing with audio of a different dataset. The orthogonal weight modification to overcome catastrophic forgetting does not consider the similarity of genuine audio across different datasets. To overcome this limitation, we propose a continual learning algorithm for fake audio detection to overcome catastrophic forgetting, called Regularized Adaptive Weight Modification (RAWM). When fine-tuning a detection network, our approach adaptively computes the direction of weight modification according to the ratio of genuine utterances and fake utterances. The adaptive modification direction ensures the network can effectively detect fake audio on the new dataset while preserving its knowledge of old model, thus mitigating catastrophic forgetting. In addition, genuine audio collected from quite different acoustic conditions may skew their feature distribution, so we introduce a regularization constraint to force the network to remember the old distribution in this regard. Our method can easily be generalized to related fields, like speech emotion recognition. We also evaluate our approach across multiple datasets and obtain a significant performance improvement on cross-dataset experiments.
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你还记得吗?克服灾难性遗忘的假音频检测
目前的假音频检测算法在大多数数据集上都取得了很好的性能。然而,当处理不同数据集的音频时,它们的性能可能会显著下降。克服灾难性遗忘的正交权值修正没有考虑不同数据集的真实音频的相似性。为了克服这一限制,我们提出了一种用于假音频检测以克服灾难性遗忘的持续学习算法,称为正则化自适应权重修正(RAWM)。在对检测网络进行微调时,我们的方法根据真实话语和虚假话语的比例自适应计算权值修改的方向。自适应修正方向保证了网络在保留旧模型知识的同时,能够有效地检测新数据集上的假音频,从而减轻灾难性遗忘。此外,从完全不同的声学条件下收集的真实音频可能会扭曲它们的特征分布,因此我们引入正则化约束来强制网络在这方面记住旧的分布。我们的方法可以很容易地推广到相关领域,如语音情感识别。我们还跨多个数据集评估了我们的方法,并在跨数据集实验中获得了显着的性能改进。
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