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      Capture the Bot: Using Adversarial Examples to Improve CAPTCHA Robustness to Bot Attacks

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          Abstract

          To this date, CAPTCHAs have served as the first line of defense preventing unauthorized access by (malicious) bots to web-based services, while at the same time maintaining a trouble-free experience for human visitors. However, recent work in the literature has provided evidence of sophisticated bots that make use of advancements in machine learning (ML) to easily bypass existing CAPTCHA-based defenses. In this work, we take the first step to address this problem. We introduce CAPTURE, a novel CAPTCHA scheme based on adversarial examples. While typically adversarial examples are used to lead an ML model astray, to the best of our knowledge, CAPTURE is the first work to make a "good use" of such mechanisms. Our empirical evaluations show that CAPTURE can produce CAPTCHAs that are easy to solve by humans while at the same time, effectively thwarting ML-based bot solvers.

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          Author and article information

          Journal
          30 October 2020
          Article
          2010.16204
          cea5e940-2271-455a-9bd5-a12cf25c42f3

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

          History
          Custom metadata
          17 pages, 4 figures. Accepted for publication on IEEE Intelligent Systems magazine
          cs.CR cs.LG

          Security & Cryptology,Artificial intelligence
          Security & Cryptology, Artificial intelligence

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