Feature Squeezing is a recently proposed defense method which reduces the
search space available to an adversary by coalescing samples that correspond to
many different feature vectors in the original space into a single sample. It
has been shown that feature squeezing defenses can be combined in a joint
detection framework to achieve high detection rates against state-of-the-art
attacks. However, we demonstrate on the MNIST and CIFAR-10 datasets that by
increasing the adversary strength of said state-of-the-art attacks, one can
bypass the detection framework with adversarial examples of minimal visual
distortion. These results suggest for proposed defenses to validate against
stronger attack configurations.