Defending users against fraudulent Websites (i.e., phishing) is a
task that is reactive in practice. Blacklists, spam filters, and takedowns all
depend on first finding new sites and verifying that they are fraudulent. In
this paper we explore an alternative approach that uses a combination of
computer-vision techniques to proactively identify likely phishing pages as
they are rendered, interactive queries to validate such pages with brand
holders, and a single keyboard-entry filter to minimize false positives. We
have developed a prototype version of this approach within the Firefox browser
and we provide a preliminary evaluation of both the underlying technology (the
accuracy and performance of logo recognition in Web pages) as well as its
effectiveness in controlled small-scale user studies. While no such approach is
perfect, our results demonstrate that this technique offers a significant new
capability for minimizing response time in combating a wide range of phishing
scams.
Pre-2018 CSE ID: CS2011-0969