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Design and evaluation of 3D CAPTCHAs

机译:3D CAPTCHA的设计和评估

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摘要

Most current 2D CAPTCHAs are vulnerable to automated character recognition attacks and the latest attacks can successfully break the 2D text CAPTCHAs at a rate of more than 90%. In this work, we present two novel 3D CAPTCHAs, which are more secure than current 2D text CAPTCHAs against automated character recognition attacks. Our approach is to display CAPTCHAs characters on 3D objects. We exploit the difficulty that machines have in rotating 3D objects to find the correct viewpoint and in further recognizing characters in 3D, while we believe humans can easily perform these tasks. Using an offline automated character recognition attack, we find that 82% of new text reCAPTCHAs are broken, while approximately 60% of our 3D CAPTCHAs are broken and only if characters are focused on and zoomed in from a direct viewpoint. When CAPTCHAs are presented in slightly different views, the attack success rate is rapidly diminished to 0%. In addition, we use commercial Deep Neural Networks-based text and object detection classifiers to attack our systems, and demonstrate that our approach is extremely difficult to break with these classifiers, even if CAPTCHA characters are presented in direct, 2D view. With emulated relay attacks, fewer than 16% of our CAPTCHAs are accurately solved by human solvers, while more than 90% of current 2D text-based CAPTCHAs are solved. Also, we performed an IRB-approved user study to evaluate the usability of our approach. Participants agreed that our approach was usable in spite of the extra time required for 3D model rotation. (C) 2018 Elsevier Ltd. All rights reserved.
机译:当前大多数2D CAPTCHA都容易受到自动字符识别攻击的影响,而最新的攻击可以以90%以上的比率成功破解2D文本CAPTCHA。在这项工作中,我们提出了两种新颖的3D CAPTCHA,它们比当前的2D文本CAPTCHA更安全,可以抵御自动字符识别攻击。我们的方法是在3D对象上显示验证码字符。我们相信机器可以轻松旋转3D对象以找到正确的视点并进一步识别3D角色,同时我们相信人类可以轻松地执行这些任务。通过使用脱机自动字符识别攻击,仅当字符从直接的角度聚焦并放大时,我们发现82%的新文本reCAPTCHA被破坏,而大约60%的3D CAPTCHA被破坏。当CAPTCHA以稍微不同的视图呈现时,攻击成功率会迅速降低至0%。此外,我们使用基于商业深度神经网络的文本和对象检测分类器来攻击我们的系统,并证明即使这些CAPTCHA字符以直接的2D视图显示,我们的方法也很难用这些分类器进行破解。通过模拟中继攻击,人类求解器无法准确解决我们的验证码不足16%,而当前基于二维文本的验证码解决了90%以上。此外,我们进行了IRB批准的用户研究,以评估我们方法的可用性。参与者一致认为,尽管3D模型旋转需要额外的时间,但我们的方法仍然可用。 (C)2018 Elsevier Ltd.保留所有权利。

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