Using Generative Adversarial Networks to Break and Protect Text Captchas

Author:

Ye Guixin1ORCID,Tang Zhanyong1,Fang Dingyi1,Zhu Zhanxing2,Feng Yansong2,Xu Pengfei1,Chen Xiaojiang1,Han Jungong3,Wang Zheng4

Affiliation:

1. Northwest University, China

2. Peking University, China

3. University of Warwick, United Kingdom

4. University of Leeds, United Kingdom

Abstract

Text-based CAPTCHAs remains a popular scheme for distinguishing between a legitimate human user and an automated program. This article presents a novel genetic text captcha solver based on the generative adversarial network. As a departure from prior text captcha solvers that require a labor-intensive and time-consuming process to construct, our scheme needs significantly fewer real captchas but yields better performance in solving captchas. Our approach works by first learning a synthesizer to automatically generate synthetic captchas to construct a base solver. It then improves and fine-tunes the base solver using a small number of labeled real captchas. As a result, our attack requires only a small set of manually labeled captchas, which reduces the cost of launching an attack on a captcha scheme. We evaluate our scheme by applying it to 33 captcha schemes, of which 11 are currently used by 32 of the top-50 popular websites. Experimental results demonstrate that our scheme significantly outperforms four prior captcha solvers and can solve captcha schemes where others fail. As a countermeasure, we propose to add imperceptible perturbations onto a captcha image. We demonstrate that our countermeasure can greatly reduce the success rate of the attack.

Funder

National Natural Science Foundation of China

Ant Financial Science Funds for Security Research

International Cooperation Project of Shaanxi Province

Publisher

Association for Computing Machinery (ACM)

Subject

Safety, Risk, Reliability and Quality,General Computer Science

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