Deep-CAPTCHA: A Deep Learning Based CAPTCHA Solver for Vulnerability Assessment

Zahra Noury, Mahdi Rezaei
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引用次数: 30

Abstract

CAPTCHA is a human-centred test to distinguish a human operator from bots, attacking programs, or other computerised agents that tries to imitate human intelligence. In this research, we investigate a way to crack visual CAPTCHA tests by an automated deep learning based solution. The goal of this research is to investigate the weaknesses and vulnerabilities of the CAPTCHA generator systems; hence, developing more robust CAPTCHAs, without taking the risks of manual try and fail efforts. We develop a Convolutional Neural Network called Deep-CAPTCHA to achieve this goal. The proposed platform is able to investigate both numerical and alphanumerical CAPTCHAs. To train and develop an efficient model, we have generated a dataset of 500,000 CAPTCHAs to train our model. In this paper, we present our customised deep neural network model, we review the research gaps, the existing challenges, and the solutions to cope with the issues. Our network's cracking accuracy leads to a high rate of 98.94% and 98.31% for the numerical and the alpha-numerical test datasets, respectively. That means more works is required to develop robust CAPTCHAs, to be non-crackable against automated artificial agents. As the outcome of this research, we identify some efficient techniques to improve the security of the CAPTCHAs, based on the performance analysis conducted on the Deep-CAPTCHA model.
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Deep-CAPTCHA:基于深度学习的漏洞评估CAPTCHA求解器
CAPTCHA是一种以人为中心的测试,旨在将人类操作员与机器人、攻击程序或其他试图模仿人类智能的计算机化代理区分开来。在这项研究中,我们研究了一种通过基于自动化深度学习的解决方案来破解视觉CAPTCHA测试的方法。本研究的目的是调查CAPTCHA生成系统的弱点和漏洞;因此,开发更健壮的captcha,而无需承担手动尝试和失败的风险。我们开发了一种称为Deep-CAPTCHA的卷积神经网络来实现这一目标。所提出的平台能够研究数字和字母数字验证码。为了训练和开发一个有效的模型,我们生成了一个包含500,000个验证码的数据集来训练我们的模型。在本文中,我们提出了我们的定制深度神经网络模型,我们回顾了研究差距,存在的挑战,以及解决问题的解决方案。我们的网络在数值和α -数值测试数据集上的破解准确率分别高达98.94%和98.31%。这意味着需要做更多的工作来开发强大的验证码,以防止自动人工代理的破解。作为本研究的结果,基于对Deep-CAPTCHA模型进行的性能分析,我们确定了一些有效的技术来提高captcha的安全性。
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