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Unraveling Adversarial Examples against Speaker Identification --
  Techniques for Attack Detection and Victim Model Classification

Unraveling Adversarial Examples against Speaker Identification -- Techniques for Attack Detection and Victim Model Classification

29 February 2024
Sonal Joshi
Thomas Thebaud
Jesús Villalba
Najim Dehak
    AAML
ArXivPDFHTML

Papers citing "Unraveling Adversarial Examples against Speaker Identification -- Techniques for Attack Detection and Victim Model Classification"

5 / 5 papers shown
Title
AdvEst: Adversarial Perturbation Estimation to Classify and Detect
  Adversarial Attacks against Speaker Identification
AdvEst: Adversarial Perturbation Estimation to Classify and Detect Adversarial Attacks against Speaker Identification
Sonal Joshi
Saurabh Kataria
Jesus Villalba
Najim Dehak
AAML
54
7
0
08 Apr 2022
SoK: The Faults in our ASRs: An Overview of Attacks against Automatic
  Speech Recognition and Speaker Identification Systems
SoK: The Faults in our ASRs: An Overview of Attacks against Automatic Speech Recognition and Speaker Identification Systems
H. Abdullah
Kevin Warren
Vincent Bindschaedler
Nicolas Papernot
Patrick Traynor
AAML
44
129
0
13 Jul 2020
ECAPA-TDNN: Emphasized Channel Attention, Propagation and Aggregation in
  TDNN Based Speaker Verification
ECAPA-TDNN: Emphasized Channel Attention, Propagation and Aggregation in TDNN Based Speaker Verification
Brecht Desplanques
Jenthe Thienpondt
Kris Demuynck
65
1,323
0
14 May 2020
BUT System Description to VoxCeleb Speaker Recognition Challenge 2019
BUT System Description to VoxCeleb Speaker Recognition Challenge 2019
Hossein Zeinali
Shuai Wang
Anna Silnova
P. Matejka
Oldrich Plchot
DRL
67
247
0
16 Oct 2019
Towards Evaluating the Robustness of Neural Networks
Towards Evaluating the Robustness of Neural Networks
Nicholas Carlini
D. Wagner
OOD
AAML
181
8,513
0
16 Aug 2016
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