In standard Deep Neural Network (DNN) based classifiers, the general convention is to omit the activation function in the last (output) layer and directly apply the softmax function on the logits to get the probability scores of each class. In this type of architectures, the loss value of the classifier against any output class is directly proportional to the difference between the final probability score and the label value of the associated class. Standard White-box adversarial evasion attacks, whether targeted or untargeted, mainly try to exploit the gradient of the model loss function to craft adversarial samples and fool the model. In this study, we show both mathematically and experimentally that using some widely known activation fun...
The lack of robustness in neural network classifiers, especially when facing adversarial attacks, is...
We perform a comprehensive study on the performance of derivative free optimization (DFO) algorithms...
Adversarial attacks and defenses are currently active areas of research for the deep learning commun...
In standard Deep Neural Network (DNN) based classifiers, the general convention is to omit the activ...
In standard Deep Neural Network (DNN) based classifiers, the general convention is to omit the activ...
Deep Neural Networks (DNNs) have made many breakthroughs in different areas of artificial intelligen...
Deep neural networks have proven remarkably effective at solving many classification problems, but h...
Recent studies show that the deep neural networks (DNNs) have achieved great success in various task...
Despite superior accuracy on most vision recognition tasks, deep neural networks are susceptible to ...
In adversarial examples, humans can easily classify the images even though the images are corrupted...
Deep neural networks are vulnerable to small input perturbations known as adversarial attacks. Inspi...
We improve the robustness of Deep Neural Net (DNN) to adversarial attacks by using an interpolating ...
Adversarial attacks deceive deep neural network models by adding imperceptibly small but well-design...
We propose new, more efficient targeted white-box attacks against deep neural networks. Our attacks ...
In recent years, adversarial attack methods have been deceived rather easily on deep neural networks...
The lack of robustness in neural network classifiers, especially when facing adversarial attacks, is...
We perform a comprehensive study on the performance of derivative free optimization (DFO) algorithms...
Adversarial attacks and defenses are currently active areas of research for the deep learning commun...
In standard Deep Neural Network (DNN) based classifiers, the general convention is to omit the activ...
In standard Deep Neural Network (DNN) based classifiers, the general convention is to omit the activ...
Deep Neural Networks (DNNs) have made many breakthroughs in different areas of artificial intelligen...
Deep neural networks have proven remarkably effective at solving many classification problems, but h...
Recent studies show that the deep neural networks (DNNs) have achieved great success in various task...
Despite superior accuracy on most vision recognition tasks, deep neural networks are susceptible to ...
In adversarial examples, humans can easily classify the images even though the images are corrupted...
Deep neural networks are vulnerable to small input perturbations known as adversarial attacks. Inspi...
We improve the robustness of Deep Neural Net (DNN) to adversarial attacks by using an interpolating ...
Adversarial attacks deceive deep neural network models by adding imperceptibly small but well-design...
We propose new, more efficient targeted white-box attacks against deep neural networks. Our attacks ...
In recent years, adversarial attack methods have been deceived rather easily on deep neural networks...
The lack of robustness in neural network classifiers, especially when facing adversarial attacks, is...
We perform a comprehensive study on the performance of derivative free optimization (DFO) algorithms...
Adversarial attacks and defenses are currently active areas of research for the deep learning commun...