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Cyber-Physical Systems Virtual Organization

Read-only archive of site from September 29, 2023.

CPS-VO

defense success rates

biblio

Visible to the public Denoising and Verification Cross-Layer Ensemble Against Black-box Adversarial Attacks

Submitted by aekwall on Mon, 09/21/2020 - 3:36pm
  • adversarial inputs
  • Cross Layer Security
  • verification cross-layer ensemble
  • unsupervised model
  • supervised model verification ensemble
  • representative attacks
  • noise reduction
  • MODEF
  • Manifolds
  • ensemble diversity
  • ensemble defense
  • defense-attack arms race
  • defense success rates
  • cross-layer model diversity ensemble framework
  • black-box adversarial attacks
  • benign inputs
  • security of data
  • adversarial deep learning
  • composability
  • DNNs
  • adversarial examples
  • machine learning tasks
  • deep neural networks
  • Predictive models
  • testing
  • Training
  • Neural networks
  • neural nets
  • Robustness
  • pubcrawl
  • Resiliency
  • learning (artificial intelligence)

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