Semi-supervised deep learning approach to break common CAPTCHAs

被引:0
|
作者
Ondrej Bostik
Karel Horak
Lukas Kratochvila
Tomas Zemcik
Simon Bilik
机构
[1] Brno University of Technology,Faculty of Electrical Engineering and Communication
来源
关键词
CAPTCHA; Semi-supervised learning; Convolutional neural networks;
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暂无
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学科分类号
摘要
Manual data annotation is a time consuming activity. A novel strategy for automatic training of the CAPTCHA breaking system with no manual dataset creation is presented in this paper. We demonstrate the feasibility of the attack against a text-based CAPTCHA scheme utilizing similar network infrastructure used for Denial of Service attacks. The main goal of our research is to present a possible vulnerability in CAPTCHA systems when combining the brute-force attack with transfer learning. The classification step utilizes a simple convolutional neural network with 15 layers. Training stage uses automatically prepared dataset created without any human intervention and transfer learning for fine-tuning the deep neural network classifier. The designed system for breaking text-based CAPTCHAs achieved 80% classification accuracy after 6 fine-tuning steps for a 5 digit text-based CAPTCHA system. The results presented in this paper suggest, that even the simple attack with a large number of attacking computers can be an effective alternative to current CAPTCHA breaking systems.
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页码:13333 / 13343
页数:10
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