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Mitigating Evasion Attacks to Deep Neural Networks via Region-based
  Classification

Mitigating Evasion Attacks to Deep Neural Networks via Region-based Classification

17 September 2017
Xiaoyu Cao
Neil Zhenqiang Gong
    AAML
ArXivPDFHTML

Papers citing "Mitigating Evasion Attacks to Deep Neural Networks via Region-based Classification"

50 / 59 papers shown
Title
CeTAD: Towards Certified Toxicity-Aware Distance in Vision Language Models
CeTAD: Towards Certified Toxicity-Aware Distance in Vision Language Models
Xiangyu Yin
Jiaxu Liu
Zhen Chen
Jinwei Hu
Yi Dong
Xiaowei Huang
Wenjie Ruan
AAML
50
0
0
08 Mar 2025
Model-agnostic clean-label backdoor mitigation in cybersecurity environments
Model-agnostic clean-label backdoor mitigation in cybersecurity environments
Giorgio Severi
Simona Boboila
J. Holodnak
K. Kratkiewicz
Rauf Izmailov
Alina Oprea
Alina Oprea
AAML
37
1
0
11 Jul 2024
HOLMES: to Detect Adversarial Examples with Multiple Detectors
HOLMES: to Detect Adversarial Examples with Multiple Detectors
Jing Wen
AAML
46
0
0
30 May 2024
Trustworthy Distributed AI Systems: Robustness, Privacy, and Governance
Trustworthy Distributed AI Systems: Robustness, Privacy, and Governance
Wenqi Wei
Ling Liu
33
16
0
02 Feb 2024
Toward Robust Recommendation via Real-time Vicinal Defense
Toward Robust Recommendation via Real-time Vicinal Defense
Yichang Xu
Chenwang Wu
Defu Lian
AAML
18
0
0
29 Sep 2023
Adversarial Evasion Attacks Practicality in Networks: Testing the Impact of Dynamic Learning
Adversarial Evasion Attacks Practicality in Networks: Testing the Impact of Dynamic Learning
Mohamed el Shehaby
Ashraf Matrawy
AAML
33
7
0
08 Jun 2023
Poisoning Network Flow Classifiers
Poisoning Network Flow Classifiers
Giorgio Severi
Simona Boboila
Alina Oprea
J. Holodnak
K. Kratkiewicz
J. Matterer
AAML
43
4
0
02 Jun 2023
Probabilistic computation and uncertainty quantification with emerging
  covariance
Probabilistic computation and uncertainty quantification with emerging covariance
He Ma
Yong Qi
Li Zhang
Wenlian Lu
Jianfeng Feng
11
1
0
30 May 2023
REaaS: Enabling Adversarially Robust Downstream Classifiers via Robust
  Encoder as a Service
REaaS: Enabling Adversarially Robust Downstream Classifiers via Robust Encoder as a Service
Wenjie Qu
Jinyuan Jia
Neil Zhenqiang Gong
SILM
AAML
34
4
0
07 Jan 2023
Pre-trained Encoders in Self-Supervised Learning Improve Secure and
  Privacy-preserving Supervised Learning
Pre-trained Encoders in Self-Supervised Learning Improve Secure and Privacy-preserving Supervised Learning
Hongbin Liu
Wenjie Qu
Jinyuan Jia
Neil Zhenqiang Gong
SSL
28
6
0
06 Dec 2022
Improved techniques for deterministic l2 robustness
Improved techniques for deterministic l2 robustness
Sahil Singla
S. Feizi
AAML
28
10
0
15 Nov 2022
Universal Evasion Attacks on Summarization Scoring
Universal Evasion Attacks on Summarization Scoring
Wenchuan Mu
Kwan Hui Lim
AAML
43
1
0
25 Oct 2022
Adversarial Pretraining of Self-Supervised Deep Networks: Past, Present
  and Future
Adversarial Pretraining of Self-Supervised Deep Networks: Past, Present and Future
Guo-Jun Qi
M. Shah
SSL
23
8
0
23 Oct 2022
DE-CROP: Data-efficient Certified Robustness for Pretrained Classifiers
DE-CROP: Data-efficient Certified Robustness for Pretrained Classifiers
Gaurav Kumar Nayak
Ruchit Rawal
Anirban Chakraborty
19
3
0
17 Oct 2022
Constraining Representations Yields Models That Know What They Don't
  Know
Constraining Representations Yields Models That Know What They Don't Know
João Monteiro
Pau Rodríguez López
Pierre-Andre Noel
I. Laradji
David Vazquez
AAML
44
0
0
30 Aug 2022
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
28
2
0
31 Jul 2022
RUSH: Robust Contrastive Learning via Randomized Smoothing
Yijiang Pang
Boyang Liu
Jiayu Zhou
OOD
AAML
24
1
0
11 Jul 2022
Transferable Graph Backdoor Attack
Transferable Graph Backdoor Attack
Shuiqiao Yang
Bao Gia Doan
Paul Montague
O. Vel
Tamas Abraham
S. Çamtepe
Damith C. Ranasinghe
S. Kanhere
AAML
49
36
0
21 Jun 2022
Adversarially Robust Learning with Tolerance
Adversarially Robust Learning with Tolerance
H. Ashtiani
Vinayak Pathak
Ruth Urner
AAML
26
9
0
02 Mar 2022
Boundary Defense Against Black-box Adversarial Attacks
Boundary Defense Against Black-box Adversarial Attacks
Manjushree B. Aithal
Xiaohua Li
AAML
26
6
0
31 Jan 2022
Temporal Shuffling for Defending Deep Action Recognition Models against
  Adversarial Attacks
Temporal Shuffling for Defending Deep Action Recognition Models against Adversarial Attacks
Jaehui Hwang
Huan Zhang
Jun-Ho Choi
Cho-Jui Hsieh
Jong-Seok Lee
AAML
19
5
0
15 Dec 2021
RamBoAttack: A Robust Query Efficient Deep Neural Network Decision
  Exploit
RamBoAttack: A Robust Query Efficient Deep Neural Network Decision Exploit
Viet Vo
Ehsan Abbasnejad
Damith C. Ranasinghe
AAML
30
9
0
10 Dec 2021
MedRDF: A Robust and Retrain-Less Diagnostic Framework for Medical
  Pretrained Models Against Adversarial Attack
MedRDF: A Robust and Retrain-Less Diagnostic Framework for Medical Pretrained Models Against Adversarial Attack
Mengting Xu
Tao Zhang
Daoqiang Zhang
AAML
MedIm
26
23
0
29 Nov 2021
Advances in adversarial attacks and defenses in computer vision: A
  survey
Advances in adversarial attacks and defenses in computer vision: A survey
Naveed Akhtar
Ajmal Mian
Navid Kardan
M. Shah
AAML
41
236
0
01 Aug 2021
Can You Hear It? Backdoor Attacks via Ultrasonic Triggers
Can You Hear It? Backdoor Attacks via Ultrasonic Triggers
Stefanos Koffas
Jing Xu
Mauro Conti
S. Picek
AAML
27
66
0
30 Jul 2021
Certified Robustness via Randomized Smoothing over Multiplicative
  Parameters of Input Transformations
Certified Robustness via Randomized Smoothing over Multiplicative Parameters of Input Transformations
Nikita Muravev
Aleksandr Petiushko
AAML
21
7
0
28 Jun 2021
BAARD: Blocking Adversarial Examples by Testing for Applicability,
  Reliability and Decidability
BAARD: Blocking Adversarial Examples by Testing for Applicability, Reliability and Decidability
Luke Chang
Katharina Dost
Kaiqi Zhao
Ambra Demontis
Fabio Roli
Gillian Dobbie
Jörg Simon Wicker
AAML
27
2
0
02 May 2021
ROBY: Evaluating the Robustness of a Deep Model by its Decision
  Boundaries
ROBY: Evaluating the Robustness of a Deep Model by its Decision Boundaries
Jinyin Chen
Zhen Wang
Haibin Zheng
Jun Xiao
Zhaoyan Ming
AAML
27
5
0
18 Dec 2020
Regularization with Latent Space Virtual Adversarial Training
Regularization with Latent Space Virtual Adversarial Training
Genki Osada
Budrul Ahsan
Revoti Prasad Bora
Takashi Nishide
30
14
0
26 Nov 2020
Almost Tight L0-norm Certified Robustness of Top-k Predictions against
  Adversarial Perturbations
Almost Tight L0-norm Certified Robustness of Top-k Predictions against Adversarial Perturbations
Jinyuan Jia
Binghui Wang
Xiaoyu Cao
Hongbin Liu
Neil Zhenqiang Gong
21
24
0
15 Nov 2020
The Vulnerability of the Neural Networks Against Adversarial Examples in
  Deep Learning Algorithms
The Vulnerability of the Neural Networks Against Adversarial Examples in Deep Learning Algorithms
Rui Zhao
AAML
34
1
0
02 Nov 2020
Adversarial Machine Learning in Image Classification: A Survey Towards
  the Defender's Perspective
Adversarial Machine Learning in Image Classification: A Survey Towards the Defender's Perspective
G. R. Machado
Eugênio Silva
R. Goldschmidt
AAML
33
157
0
08 Sep 2020
Backdoor Attacks to Graph Neural Networks
Backdoor Attacks to Graph Neural Networks
Zaixi Zhang
Jinyuan Jia
Binghui Wang
Neil Zhenqiang Gong
GNN
24
213
0
19 Jun 2020
Robustness Certification of Generative Models
Robustness Certification of Generative Models
M. Mirman
Timon Gehr
Martin Vechev
AAML
43
22
0
30 Apr 2020
Adversarial Attacks and Defenses: An Interpretation Perspective
Adversarial Attacks and Defenses: An Interpretation Perspective
Ninghao Liu
Mengnan Du
Ruocheng Guo
Huan Liu
Xia Hu
AAML
31
8
0
23 Apr 2020
Face-Off: Adversarial Face Obfuscation
Face-Off: Adversarial Face Obfuscation
Varun Chandrasekaran
Chuhan Gao
Brian Tang
Kassem Fawaz
S. Jha
Suman Banerjee
PICV
27
44
0
19 Mar 2020
Analyzing Accuracy Loss in Randomized Smoothing Defenses
Analyzing Accuracy Loss in Randomized Smoothing Defenses
Yue Gao
Harrison Rosenberg
Kassem Fawaz
S. Jha
Justin Hsu
AAML
24
6
0
03 Mar 2020
On Adaptive Attacks to Adversarial Example Defenses
On Adaptive Attacks to Adversarial Example Defenses
Florian Tramèr
Nicholas Carlini
Wieland Brendel
Aleksander Madry
AAML
109
823
0
19 Feb 2020
Machine Learning in Python: Main developments and technology trends in
  data science, machine learning, and artificial intelligence
Machine Learning in Python: Main developments and technology trends in data science, machine learning, and artificial intelligence
S. Raschka
Joshua Patterson
Corey J. Nolet
AI4CE
29
485
0
12 Feb 2020
Certified Robustness of Community Detection against Adversarial
  Structural Perturbation via Randomized Smoothing
Certified Robustness of Community Detection against Adversarial Structural Perturbation via Randomized Smoothing
Jinyuan Jia
Binghui Wang
Xiaoyu Cao
Neil Zhenqiang Gong
AAML
85
83
0
09 Feb 2020
GhostImage: Remote Perception Attacks against Camera-based Image
  Classification Systems
GhostImage: Remote Perception Attacks against Camera-based Image Classification Systems
Yanmao Man
Ming Li
Ryan M. Gerdes
AAML
22
8
0
21 Jan 2020
On the Resilience of Biometric Authentication Systems against Random
  Inputs
On the Resilience of Biometric Authentication Systems against Random Inputs
Benjamin Zi Hao Zhao
Hassan Jameel Asghar
M. Kâafar
AAML
39
23
0
13 Jan 2020
BlurNet: Defense by Filtering the Feature Maps
BlurNet: Defense by Filtering the Feature Maps
Ravi Raju
Mikko H. Lipasti
AAML
42
15
0
06 Aug 2019
Provably Robust Deep Learning via Adversarially Trained Smoothed
  Classifiers
Provably Robust Deep Learning via Adversarially Trained Smoothed Classifiers
Hadi Salman
Greg Yang
Jungshian Li
Pengchuan Zhang
Huan Zhang
Ilya P. Razenshteyn
Sébastien Bubeck
AAML
45
538
0
09 Jun 2019
Enhancing Gradient-based Attacks with Symbolic Intervals
Enhancing Gradient-based Attacks with Symbolic Intervals
Shiqi Wang
Yizheng Chen
Ahmed Abdou
Suman Jana
AAML
31
15
0
05 Jun 2019
On Training Robust PDF Malware Classifiers
On Training Robust PDF Malware Classifiers
Yizheng Chen
Shiqi Wang
Dongdong She
Suman Jana
AAML
50
68
0
06 Apr 2019
Certified Adversarial Robustness via Randomized Smoothing
Certified Adversarial Robustness via Randomized Smoothing
Jeremy M. Cohen
Elan Rosenfeld
J. Zico Kolter
AAML
22
1,998
0
08 Feb 2019
Image Super-Resolution as a Defense Against Adversarial Attacks
Image Super-Resolution as a Defense Against Adversarial Attacks
Aamir Mustafa
Salman H. Khan
Munawar Hayat
Jianbing Shen
Ling Shao
AAML
SupR
27
168
0
07 Jan 2019
Adversarial Examples Versus Cloud-based Detectors: A Black-box Empirical
  Study
Adversarial Examples Versus Cloud-based Detectors: A Black-box Empirical Study
Xurong Li
S. Ji
Men Han
Juntao Ji
Zhenyu Ren
Yushan Liu
Chunming Wu
AAML
26
31
0
04 Jan 2019
On the Security of Randomized Defenses Against Adversarial Samples
On the Security of Randomized Defenses Against Adversarial Samples
K. Sharad
G. Marson
H. Truong
Ghassan O. Karame
AAML
35
1
0
11 Dec 2018
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