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Bypassing Feature Squeezing by Increasing Adversary Strength

Bypassing Feature Squeezing by Increasing Adversary Strength

27 March 2018
Yash Sharma
Pin-Yu Chen
    AAML
ArXivPDFHTML

Papers citing "Bypassing Feature Squeezing by Increasing Adversary Strength"

5 / 5 papers shown
Title
Adversarial Sampling for Fairness Testing in Deep Neural Network
Adversarial Sampling for Fairness Testing in Deep Neural Network
Tosin Ige
William Marfo
Justin Tonkinson
Sikiru Adewale
Bolanle Hafiz Matti
OOD
26
9
0
06 Mar 2023
DNNShield: Dynamic Randomized Model Sparsification, A Defense Against
  Adversarial Machine Learning
DNNShield: Dynamic Randomized Model Sparsification, A Defense Against Adversarial Machine Learning
Mohammad Hossein Samavatian
Saikat Majumdar
Kristin Barber
R. Teodorescu
AAML
24
2
0
31 Jul 2022
Invisible for both Camera and LiDAR: Security of Multi-Sensor Fusion
  based Perception in Autonomous Driving Under Physical-World Attacks
Invisible for both Camera and LiDAR: Security of Multi-Sensor Fusion based Perception in Autonomous Driving Under Physical-World Attacks
Yulong Cao*
Ningfei Wang*
Chaowei Xiao
Dawei Yang
Jin Fang
Ruigang Yang
Qi Alfred Chen
Mingyan D. Liu
Bo-wen Li
AAML
29
219
0
17 Jun 2021
Stochastic-Shield: A Probabilistic Approach Towards Training-Free
  Adversarial Defense in Quantized CNNs
Stochastic-Shield: A Probabilistic Approach Towards Training-Free Adversarial Defense in Quantized CNNs
Lorena Qendro
Sangwon Ha
R. D. Jong
Partha P. Maji
AAML
FedML
MQ
21
7
0
13 May 2021
Adversarial Machine Learning at Scale
Adversarial Machine Learning at Scale
Alexey Kurakin
Ian Goodfellow
Samy Bengio
AAML
296
3,113
0
04 Nov 2016
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