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Robust Assessment of Real-World Adversarial Examples

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arxiv 1911.10435 v2 pith:2FWCDQK3 submitted 2019-11-24 cs.CV

Robust Assessment of Real-World Adversarial Examples

classification cs.CV
keywords adversarialexamplesscoreassessmentevaluationperformancerealscene
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We explore rigorous, systematic, and controlled experimental evaluation of adversarial examples in the real world and propose a testing regimen for evaluation of real world adversarial objects. We show that for small scene/ environmental perturbations, large adversarial performance differences exist. Current state of adversarial reporting exists largely as a frequency count over a dynamic collections of scenes. Our work underscores the need for either a more complete report or a score that incorporates scene changes and baseline performance for models and environments tested by adversarial developers. We put forth a score that attempts to address the above issues in a straight-forward exemplar application for multiple generated adversary examples. We contribute the following: 1. a testbed for adversarial assessment, 2. a score for adversarial examples, and 3. a collection of additional evaluations on testbed data.

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