The Asirra CAPTCHA [EDHS2007], proposed at ACM CCS 2007, relies on the
problem of distinguishing images of cats and dogs (a task that humans
are very good at). The security of Asirra is based on the presumed
difficulty of classifying these images automatically.
In this paper, we describe a classifier which is 82.7% accurate in
telling apart the images of cats and dogs used in Asirra. This
classifier is a combination of support-vector machine classifiers
trained on color and texture features extracted from images. Our
classifier allows us to solve a 12-image Asirra challenge automatically
with probability 10.3%. This probability of success is significantly
higher than the estimate of 0.2% given in [EDHS2007] for machine vision
attacks. Our results suggest caution against deploying Asirra without
safeguards.
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http://crypto.stanford.edu/~pgolle/papers/dogcat.html