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SentiNet: Detecting Localized Universal Attacks Against Deep Learning Systems
[article]
2020
arXiv
pre-print
SentiNet is a novel detection framework for localized universal attacks on neural networks. These attacks restrict adversarial noise to contiguous portions of an image and are reusable with different images -- constraints that prove useful for generating physically-realizable attacks. Unlike most other works on adversarial detection, SentiNet does not require training a model or preknowledge of an attack prior to detection. Our approach is appealing due to the large number of possible
arXiv:1812.00292v4
fatcat:5vg4nuit2vdenmkzlrinotqppe