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1803.09868
Cited By
Bypassing Feature Squeezing by Increasing Adversary Strength
27 March 2018
Yash Sharma
Pin-Yu Chen
AAML
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Papers citing
"Bypassing Feature Squeezing by Increasing Adversary Strength"
5 / 5 papers shown
Title
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
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
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
Lorena Qendro
Sangwon Ha
R. D. Jong
Partha P. Maji
AAML
FedML
MQ
21
7
0
13 May 2021
Adversarial Machine Learning at Scale
Alexey Kurakin
Ian Goodfellow
Samy Bengio
AAML
296
3,113
0
04 Nov 2016
1