With the large multimedia content online, deep hashing has become a popular method for efficient image retrieval and storage. However, by inheriting the algorithmic backend from softmax classification, these techniques are vulnerable to the well-known adversarial examples as well. The massive collection of online images into the database also opens up new attack vectors. Attackers can embed adversarial images into the database and target specific categories to be retrieved by user queries. In this paper, we start from an adversarial standpoint to explore and enhance the capacity of targeted black-box transferability attack for deep hashing. We motivate this work by a series of empirical studies to see the unique challenges in image retrieva...
We investigate if the random feature selection approach proposed in [1] to improve the robustness of...
The adversarial attack is firstly studied in image classification to generate imperceptible perturba...
By harnessing the latest advances in deep learning, image-to-image translation architectures have re...
With the rapid growth of visual content, deep learning to hash is gaining popularity in the image re...
In this thesis, we study the adversarial machine learning problem for image retrieval systems. Recen...
We study the query-based attack against image retrieval to evaluate its robustness against adversari...
With the explosive growth of images on the internet, image retrieval based on deep hashing attracts ...
Deep hashing has been extensively utilized in massive image retrieval because of its efficiency and ...
The proliferation of digital images creates problems for managing large image databases, indexing in...
Existing transfer attack methods commonly assume that the attacker knows the training set (e.g., the...
© 2018 Association for Computing Machinery. Recent studies have highlighted that deep neural network...
A backdoored deep hashing model is expected to behave normally on original query images and return t...
Hashing is widely applied to large-scale image retrieval due to the storage and retrieval efficiency...
Data-driven deep learning tasks for security related applications are gaining increasing popularity ...
Perceptual hashing is an emerging solution for multimedia content authentication. Due to their robus...
We investigate if the random feature selection approach proposed in [1] to improve the robustness of...
The adversarial attack is firstly studied in image classification to generate imperceptible perturba...
By harnessing the latest advances in deep learning, image-to-image translation architectures have re...
With the rapid growth of visual content, deep learning to hash is gaining popularity in the image re...
In this thesis, we study the adversarial machine learning problem for image retrieval systems. Recen...
We study the query-based attack against image retrieval to evaluate its robustness against adversari...
With the explosive growth of images on the internet, image retrieval based on deep hashing attracts ...
Deep hashing has been extensively utilized in massive image retrieval because of its efficiency and ...
The proliferation of digital images creates problems for managing large image databases, indexing in...
Existing transfer attack methods commonly assume that the attacker knows the training set (e.g., the...
© 2018 Association for Computing Machinery. Recent studies have highlighted that deep neural network...
A backdoored deep hashing model is expected to behave normally on original query images and return t...
Hashing is widely applied to large-scale image retrieval due to the storage and retrieval efficiency...
Data-driven deep learning tasks for security related applications are gaining increasing popularity ...
Perceptual hashing is an emerging solution for multimedia content authentication. Due to their robus...
We investigate if the random feature selection approach proposed in [1] to improve the robustness of...
The adversarial attack is firstly studied in image classification to generate imperceptible perturba...
By harnessing the latest advances in deep learning, image-to-image translation architectures have re...