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Machine learning attack on copy detection patterns: are 1x1 patterns
  cloneable?

Machine learning attack on copy detection patterns: are 1x1 patterns cloneable?

5 October 2021
Roman Chaban
O. Taran
Joakim Tutt
T. Holotyak
Slavi Bonev
S. Voloshynovskiy
ArXivPDFHTML

Papers citing "Machine learning attack on copy detection patterns: are 1x1 patterns cloneable?"

6 / 6 papers shown
Title
Assessing the Viability of Synthetic Physical Copy Detection Patterns on
  Different Imaging Systems
Assessing the Viability of Synthetic Physical Copy Detection Patterns on Different Imaging Systems
Roman Chaban
Brian Pulfer
Slava Voloshynovskiy
25
0
0
03 Oct 2024
SoK: Fighting Counterfeits with Cyber-Physical Synergy Based on
  Physically-Unclonable Identifiers of Paper Surface
SoK: Fighting Counterfeits with Cyber-Physical Synergy Based on Physically-Unclonable Identifiers of Paper Surface
Anirudh Nakra
Min Wu
Chau-Wai Wong
29
0
0
05 Aug 2024
Digital twins of physical printing-imaging channel
Digital twins of physical printing-imaging channel
Yury Belousov
Brian Pulfer
Roman Chaban
Joakim Tutt
O. Taran
T. Holotyak
S. Voloshynovskiy
27
9
0
28 Oct 2022
Printing variability of copy detection patterns
Printing variability of copy detection patterns
Roman Chaban
O. Taran
Joakim Tutt
Yury Belousov
Brian Pulfer
T. Holotyak
S. Voloshynovskiy
14
6
0
11 Oct 2022
Anomaly localization for copy detection patterns through print
  estimations
Anomaly localization for copy detection patterns through print estimations
Brian Pulfer
Yury Belousov
Joakim Tutt
Roman Chaban
O. Taran
T. Holotyak
S. Voloshynovskiy
17
6
0
29 Sep 2022
Authentication of Copy Detection Patterns under Machine Learning
  Attacks: A Supervised Approach
Authentication of Copy Detection Patterns under Machine Learning Attacks: A Supervised Approach
Brian Pulfer
Roman Chaban
Yury Belousov
Joakim Tutt
O. Taran
T. Holotyak
S. Voloshynovskiy
AAML
11
4
0
23 Jun 2022
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