用朴素模式识别算法破解视觉验证码

Jeff Yan, A. E. Ahmad
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引用次数: 268

摘要

视觉验证码已在互联网上广泛使用,以防御不受欢迎或恶意的僵尸程序。在本文中,我们记录了我们如何打破Captchaservice.org上提供的大多数可视化方案,Captchaservice.org是一个用于生成验证码的公开web服务。这些方案有效地抵抗了使用高质量光学字符识别程序进行的攻击,但被我们的新攻击以接近100%的成功率打破。与早期依赖于复杂的计算机视觉或机器学习算法的工作不同,我们使用了简单的模式识别算法,但利用了我们在每个方案中发现的致命设计错误。令人惊讶的是,我们的简单攻击也可以破坏在撰写本文时部署在Internet上的许多其他方案:它们的设计也有类似的错误。我们还讨论了防御攻击和视觉验证码方案设计的新见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Breaking Visual CAPTCHAs with Naive Pattern Recognition Algorithms
Visual CAPTCHAs have been widely used across the Internet to defend against undesirable or malicious bot programs. In this paper, we document how we have broken most such visual schemes provided at Captchaservice.org, a publicly available web service for CAPTCHA generation. These schemes were effectively resistant to attacks conducted using a high-quality Optical Character Recognition program, but were broken with a near 100% success rate by our novel attacks. In contrast to early work that relied on sophisticated computer vision or machine learning algorithms, we used simple pattern recognition algorithms but exploited fatal design errors that we discovered in each scheme. Surprisingly, our simple attacks can also break many other schemes deployed on the Internet at the time of writing: their design had similar errors. We also discuss defence against our attacks and new insights on the design of visual CAPTCHA schemes.
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