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      CAPTCHaStar! A novel CAPTCHA based on interactive shape discovery

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          Abstract

          Over the last years, most websites on which users can register (e.g., email providers and social networks) adopted CAPTCHAs (Completely Automated Public Turing test to tell Computers and Humans Apart) as a countermeasure against automated attacks. The battle of wits between designers and attackers of CAPTCHAs led to current ones being annoying and hard to solve for users, while still being vulnerable to automated attacks. In this paper, we propose CAPTCHaStar, a new image-based CAPTCHA that relies on user interaction. This novel CAPTCHA leverages the innate human ability to recognize shapes in a confused environment. We assess the effectiveness of our proposal for the two key aspects for CAPTCHAs, i.e., usability, and resiliency to automated attacks. In particular, we evaluated the usability, carrying out a thorough user study, and we tested the resiliency of our proposal against several types of automated attacks: traditional ones; designed ad-hoc for our proposal; and based on machine learning. Compared to the state of the art, our proposal is more user friendly (e.g., only some 35% of the users prefer current solutions, such as text-based CAPTCHAs) and more resilient to automated attacks.

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          Most cited references25

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          Telling humans and computers apart automatically

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            To recognize shapes, first learn to generate images.

            The uniformity of the cortical architecture and the ability of functions to move to different areas of cortex following early damage strongly suggest that there is a single basic learning algorithm for extracting underlying structure from richly structured, high-dimensional sensory data. There have been many attempts to design such an algorithm, but until recently they all suffered from serious computational weaknesses. This chapter describes several of the proposed algorithms and shows how they can be combined to produce hybrid methods that work efficiently in networks with many layers and millions of adaptive connections.
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              Text-based CAPTCHA strengths and weaknesses

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                Author and article information

                Journal
                2015-03-02
                2015-12-17
                Article
                1503.00561
                8ae359a6-1b5c-4eb1-9301-5643899c59fe

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

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                Custom metadata
                15 pages
                cs.HC

                Human-computer-interaction
                Human-computer-interaction

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