基于对抗性Bi-GRU和数据蒸馏的AMR隐写分析

Z. Wu, Junjun Guo
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引用次数: 2

摘要

现有的基于基音延迟的AMR (Adaptive Multi-Rate)隐写算法对嵌入时间短或嵌入率低的样本检测精度较低,且模型在对抗性样本的攻击下表现出脆弱性。为了解决这一问题,我们设计了一种基于对抗性双向门控循环单元(Bi-GRU)和数据蒸馏的先进AMR隐写方法。首先将高斯白噪声随机加入到部分原始语音中形成对抗数据集,然后对少量语音进行人工标注来训练模型。其次,对剩余的原始语音数据进行1.5倍速度、0.5倍速度、镜像翻转三次变换,并将其放入Bi-GRU中进行分类,决策融合得到的最终预测标签与原始数据对应。最后将所有带标签的数据放回Bi-GRU模型中进行最终训练。需要指出的是,每一批最终的训练数据都包括正常样本和对抗样本。该方法采用半监督学习方法,大大节省了人工标注所消耗的资源,并引入对抗性Bi-GRU,可以长时间实现样本的双向分析。在提高检测精度的基础上,大大提高了模型的安全性和鲁棒性。实验结果表明,对于正常样本和对抗样本,该算法的准确率分别达到96.73%和95.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AMR Steganalysis based on Adversarial Bi-GRU and Data Distillation
Existing AMR (Adaptive Multi-Rate) steganalysis algorithms based on pitch delay have low detection accuracy on samples with short time or low embedding rate, and the model shows fragility under the attack of adversarial samples. To solve this problem, we design an advanced AMR steganalysis method based on adversarial Bi-GRU (Bi-directional Gated Recurrent Unit) and data distillation. First, Gaussian white noise is randomly added to part of the original speech to form adversarial data set, then artificially annotate a small amount of voice to train the model. Second, perform three transformations of 1.5 times speed, 0.5 times speed, and mirror flip on the remaining original voice data, then put them into Bi-GRU for classification, and the final predicted label obtained by the decision fusion corresponds to the original data. All data with the label is put back into the Bi-GRU model for final training at last. What needs to be pointed out is that each batch of final training data includes normal and adversarial samples. This method adopts a semi-supervised learning method, which greatly saves the resources consumed by manual labeling, and introduces adversarial Bi-GRU, which can realize the two-direction analysis of samples for a long time. Based on improving the detection accuracy, the safety and robustness of the model are greatly improved. The experimental results show that for normal and adversarial samples, the algorithm can achieve accuracy of 96.73% and 95.6% respectively.
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