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FAWA: Fast Adversarial Watermark Attack on Optical Character Recognition (OCR) Systems

机译:FAWA:光学字符识别(OCR)系统的快速逆境水印攻击

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Deep neural networks (DNNs) significantly improved the accuracy of optical character recognition (OCR) and inspired many important applications. Unfortunately, OCRs also inherit the vulnerability of DNNs under adversarial examples. Different from colorful vanilla images, text images usually have clear backgrounds. Adversarial examples generated by most existing adversarial attacks are unnatural and pollute the background severely. To address this issue, we propose the Fast Adversarial Watermark Attack (FAWA) against sequence-based OCR models in the white-box manner. By disguising the perturbations as watermarks, we can make the resulting adversarial images appear natural to human eyes and achieve a perfect attack success rate. FAWA works with either gradient-based or optimization-based perturbation generation. In both letter-level and word-level attacks, our experiments show that in addition to natural appearance, FAWA achieves a 100% attack success rate with 60% less perturbations and 78% fewer iterations on average. In addition, we further extend FAWA to support full-color watermarks, other languages, and even the OCR accuracy-enhancing mechanism.
机译:深度神经网络(DNN)显着提高了光学字符识别(OCR)的准确性,并激发了许多重要应用。不幸的是,OCR也在对抗的例子下继承了DNN的脆弱性。不同于彩色香草图像,文本图像通常具有清晰的背景。大多数现有的对抗性攻击产生的对抗例子是不自然的并且严重污染了背景。为了解决这个问题,我们提出了以白色盒式方式对基于序列的OCR模型的快速对抗性水印攻击(FAWA)。通过伪装扰动作为水印,我们可以使所产生的对抗性图像对人眼显得自然,实现完美的攻击成功率。 Fawa与基于梯度的或优化的扰动产生。在字母级和单词级攻击中,我们的实验表明,除了天然外观之外,FAWA还达到了100%的攻击成功率,扰动60%,平均迭代减少78%。此外,我们还将Fawa延伸以支持全彩水印,其他语言,甚至是OCR精度增强机制。

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