Recent studies have highlighted the vulnerability of deep neural networks
(DNNs) to adversarial examples - a visually indistinguishable adversarial image
can easily be crafted to cause a well-trained model to misclassify. Existing
methods for crafting adversarial examples are based on $L_2$ and $L_\infty$
distortion metrics. However, despite the fact that $L_1$ distortion accounts
for the total variation and encourages sparsity in the perturbation, little has
been developed for crafting $L_1$-based adversarial examples. In this paper, we
formulate the process of attacking DNNs via adversarial examples as an
elastic-net regularized optimization problem. Our elastic-net attacks to DNNs
(EAD) feature $L_1$-oriented adversarial examples and include the
state-of-the-art $L_2$ attack as a special case. Experimental results on MNIST,
CIFAR10 and ImageNet show that EAD can yield a distinct set of adversarial
examples with small $L_1$ distortion and attains similar attack performance to
the state-of-the-art methods in different attack scenarios. More importantly,
EAD leads to improved attack transferability and complements adversarial
training for DNNs, suggesting novel insights on leveraging $L_1$ distortion in
adversarial machine learning and security implications of DNNs.