论文标题
对现实世界中音频识别的语音对抗性攻击
Phonemic Adversarial Attack against Audio Recognition in Real World
论文作者
论文摘要
最近,识别音频识别的对抗性攻击引起了很多关注。但是,大多数现有研究主要依赖于实例级别的粗粒音频功能来产生对抗性噪声,这会导致昂贵的生成时间成本和较弱的通用攻击能力。本文提出了一个观察到所有音频语音都由基本音素组成的观察,本文提出了一种音素对抗性大头钉(PAT)范式,该范式攻击了通常在音频实例中共享的音素级别上的细粒音频功能,以产生音调对抗性噪声,并具有快速生成的快速速度的更一般的攻击能力。具体而言,为了加速发电,引入了音素密度平衡采样策略,以减少样本数量,但语音特征丰富的音频实例是通过估计音素密度的训练数据,这基本上可以减轻对大型训练数据集的重度依赖性。此外,为了促进通用攻击能力,用滑动窗口以异步方式优化了音素噪声,从而增强了音素多样性,从而很好地捕获了关键的基本语音模式。通过进行广泛的实验,我们全面研究了提出的PAT框架,并证明它的表现优于SOTA基准,即至少提高11倍加速和78%的攻击能力提高)。
Recently, adversarial attacks for audio recognition have attracted much attention. However, most of the existing studies mainly rely on the coarse-grain audio features at the instance level to generate adversarial noises, which leads to expensive generation time costs and weak universal attacking ability. Motivated by the observations that all audio speech consists of fundamental phonemes, this paper proposes a phonemic adversarial tack (PAT) paradigm, which attacks the fine-grain audio features at the phoneme level commonly shared across audio instances, to generate phonemic adversarial noises, enjoying the more general attacking ability with fast generation speed. Specifically, for accelerating the generation, a phoneme density balanced sampling strategy is introduced to sample quantity less but phonemic features abundant audio instances as the training data via estimating the phoneme density, which substantially alleviates the heavy dependency on the large training dataset. Moreover, for promoting universal attacking ability, the phonemic noise is optimized in an asynchronous way with a sliding window, which enhances the phoneme diversity and thus well captures the critical fundamental phonemic patterns. By conducting extensive experiments, we comprehensively investigate the proposed PAT framework and demonstrate that it outperforms the SOTA baselines by large margins (i.e., at least 11X speed up and 78% attacking ability improvement).