Discovery Notes: Nicolas Papernot, Google PhD Fellow at The Pennsylvania State University Speaker: George Kesidis received his MS (in 1990) and PhD (in 1992) in Electrical Engineering and Computer Sciences from the ...

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Speaker: George Kesidis received his MS (in 1990) and PhD (in 1992) in Electrical Engineering and Computer Sciences from the ... Abstract: We investigate conditions under which test statistics exist that can reliably Nicolas Papernot, Google PhD Fellow at The Pennsylvania State University

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  • Abstract: We investigate conditions under which test statistics exist that can reliably
  • Speaker: George Kesidis received his MS (in 1990) and PhD (in 1992) in Electrical Engineering and Computer Sciences from the ...
  • Nicolas Papernot, Google PhD Fellow at The Pennsylvania State University

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Detecting Adversarial Examples in Deep Learning

Detecting Adversarial Examples in Deep Learning

Speaker: George Kesidis received his MS (in 1990) and PhD (in 1992) in Electrical Engineering and Computer Sciences from the ...

NDSS 2018 - Feature Squeezing: Detecting Adversarial Examples in Deep Neural Networks

NDSS 2018 - Feature Squeezing: Detecting Adversarial Examples in Deep Neural Networks

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USENIX Security '21 - WaveGuard: Understanding and Mitigating Audio Adversarial Examples

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