Learning-based pattern classifiers, including deep networks, have shown impressive performance in several application domains, ranging from computer vision to cybersecurity. However, it has also been shown that adversarial input perturbations carefully crafted either at training or at test time can easily subvert their predictions. The vulnerability of machine learning to such wild patterns (also referred to as adversarial examples), along with the design of suitable countermeasures, have been investigated in the research field of adversarial machine learning. In this work, we provide a thorough overview of the evolution of this research area over the last ten years and beyond, starting from pioneering, earlier work on the security of non-d...
Machine learning has been utilized for a number of applications in both the public and private secto...
Machine learning has become a prevalent tool in many computing applications and modern enterprise sy...
The widespread adoption of machine learning, especially Deep Neural Networks (DNNs) in daily life, c...
Learning-based pattern classifiers, including deep networks, have shown impressive performance in se...
Deep neural networks and machine-learning algorithms are pervasively used in several applications, r...
The success of machine learning is fueled by the increasing availability of computing power and larg...
Machine learning systems have had enormous success in a wide range of fields from computer vision, n...
In the last decades, machine learning has been widely used in security applications like spam filter...
Pattern recognition systems based on machine learning techniques are nowadays widely used in many di...
Data-driven deep learning tasks for security related applications are gaining increasing popularity ...
In this thesis we analyse test time adversarial examples for machine learning in security domains. F...
Deep learning has witnessed astonishing advancement in the last decade and revolutionized many field...
We analyze the problem of designing pattern recognition systems in adversarial settings, under an en...
Deep learning has improved the performance of many computer vision tasks. However, the features that...
In recent years, machine learning (ML) has become an important part to yield security and privacy in...
Machine learning has been utilized for a number of applications in both the public and private secto...
Machine learning has become a prevalent tool in many computing applications and modern enterprise sy...
The widespread adoption of machine learning, especially Deep Neural Networks (DNNs) in daily life, c...
Learning-based pattern classifiers, including deep networks, have shown impressive performance in se...
Deep neural networks and machine-learning algorithms are pervasively used in several applications, r...
The success of machine learning is fueled by the increasing availability of computing power and larg...
Machine learning systems have had enormous success in a wide range of fields from computer vision, n...
In the last decades, machine learning has been widely used in security applications like spam filter...
Pattern recognition systems based on machine learning techniques are nowadays widely used in many di...
Data-driven deep learning tasks for security related applications are gaining increasing popularity ...
In this thesis we analyse test time adversarial examples for machine learning in security domains. F...
Deep learning has witnessed astonishing advancement in the last decade and revolutionized many field...
We analyze the problem of designing pattern recognition systems in adversarial settings, under an en...
Deep learning has improved the performance of many computer vision tasks. However, the features that...
In recent years, machine learning (ML) has become an important part to yield security and privacy in...
Machine learning has been utilized for a number of applications in both the public and private secto...
Machine learning has become a prevalent tool in many computing applications and modern enterprise sy...
The widespread adoption of machine learning, especially Deep Neural Networks (DNNs) in daily life, c...