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A GAPTCHA model based on visual psychophysics: Using the brain to distinguish between human users and automated computer bots

机译:基于视觉心理物理学的GAPTCHA模型:使用大脑区分人类用户和自动计算机机器人

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Demand for the use of online services such as free emails, social networks, and online polling is increasing at an exponential rate. Due to this, online service providers and retailers feel pressurised to satisfy the multitude of end-user expectations. Meanwhile, automated computer robots (known as "bots") are targeting online retailers and service providers by acting as human users and providing false information in order to abuse their service provisioning. CAPTCHA is a set of challenge/response protocol, which was introduced to protect online retailers and service providers from misuse and automated computer attacks. Text-based CAPTCHAs are the most popular form, and are used by most online service providers to differentiate between the human users and bots. However, the vast majority of text-based CAPTCHAs have been broken using the Optical Character Recognition (OCR) techniques and thus, reinforces the need for developing a secure and robust CAPTCHA model. Security and usability are the two fundamental issues that pose a trade-off in the design of a CAPTCHA; a hard CAPTCHA model could also be difficult for human users to resolve, which affects its usability, and vice versa. The model developed in this study uses the unsurpassed abilities of the Human Visual System (HVS) to superimpose and integrate complex information presented in individual frames, using the mechanism of trans-saccadic memory. In this context, the model integrates in its design the concept of persistence 0/ vision, which enables humans to see the world in a continuous fashion. Preliminary results from the proposed model based on this technique are encouraging. To ensure the usability of the proposed CAPTCHA model, we set the threshold for the ORO parameter at 40%. This ensured that our CAPTCHA strings would be recognised by human observers at a rate of over 99% (or as close to 100% as is realistic). In turn, when examining the robustness of our VICAP model to computer programme attacks, we can observe that for the traditional case of OCR recognition, based on a single-frame scenario, the Computer Recognition Success Rate (CRSR) was about 0%, while in the case of a multi-frame scenario, the CRSR could increase to up to 50%.
机译:使用免费电子邮件,社交网络和在线民意调查等在线服务的需求正呈指数级增长。因此,在线服务提供商和零售商感到迫切需要满足众多最终用户的期望。同时,自动化计算机机器人(称为“机器人”)通过充当人类用户并提供虚假信息来滥用在线服务,从而将在线零售商和服务提供商作为攻击目标。 CAPTCHA是一组质询/响应协议,旨在保护在线零售商和服务提供商免受滥用和自动计算机攻击。基于文本的验证码是最流行的形式,大多数在线服务提供商使用它来区分人类用户和机器人。但是,绝大多数基于文本的验证码已使用光学字符识别(OCR)技术进行了破解,因此更加需要开发安全可靠的验证码模型。安全性和可用性是在验证码设计中需要权衡的两个基本问题。硬CAPTCHA模型对于人类用户而言也可能难以解析,这会影响其可用性,反之亦然。在这项研究中开发的模型利用人类视觉系统(HVS)的无与伦比的功能,利用跨音调记忆的机制来叠加和整合单个帧中呈现的复杂信息。在这种情况下,该模型在其设计中集成了持久性0 /视觉的概念,使人类能够以连续的方式看到世界。基于此技术的建议模型的初步结果令人鼓舞。为了确保所提出的验证码模型的可用性,我们将ORO参数的阈值设置为40%。这确保了我们的CAPTCHA字符串将以超过99%的比率(或接近实际的100%)被人类观察者识别。反过来,在检查VICAP模型对计算机程序攻击的鲁棒性时,我们可以观察到,对于传统的OCR识别,基于单帧场景,计算机识别成功率(CRSR)约为0%,而在多帧情况下,CRSR可能会增加到50%。

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