10   Artículos

 
en línea
Meng Bi, Xianyun Yu, Zhida Jin and Jian Xu    
In this paper, we propose an Iterative Greedy-Universal Adversarial Perturbations (IGUAP) approach based on an iterative greedy algorithm to create universal adversarial perturbations for acoustic prints. A thorough, objective account of the IG-UAP metho... ver más
Revista: Applied Sciences    Formato: Electrónico

 
en línea
Mehdi Sadi, Bashir Mohammad Sabquat Bahar Talukder, Kaniz Mishty and Md Tauhidur Rahman    
Universal adversarial perturbations are image-agnostic and model-independent noise that, when added to any image, can mislead the trained deep convolutional neural networks into the wrong prediction. Since these universal adversarial perturbations can se... ver más
Revista: Information    Formato: Electrónico

 
en línea
Songshen Han, Kaiyong Xu, Songhui Guo, Miao Yu and Bo Yang    
Automatic Speech Recognition (ASR) provides a new way of human-computer interaction. However, it is vulnerable to adversarial examples, which are obtained by deliberately adding perturbations to the original audios. Thorough studies on the universal feat... ver más
Revista: Applied Sciences    Formato: Electrónico

 
en línea
Hokuto Hirano and Kazuhiro Takemoto    
Deep neural networks (DNNs) are vulnerable to adversarial attacks. In particular, a single perturbation known as the universal adversarial perturbation (UAP) can foil most classification tasks conducted by DNNs. Thus, different methods for generating UAP... ver más
Revista: Algorithms    Formato: Electrónico

 
en línea
Yibin Ruan and Jiazhu Dai    
Deep neural network has achieved great progress on tasks involving complex abstract concepts. However, there exist adversarial perturbations, which are imperceptible to humans, which can tremendously undermine the performance of deep neural network class... ver más
Revista: Future Internet    Formato: Electrónico

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