A DIP-based optimization produces adversarial perturbations and patches that are more robust to affine transformations than standard high-frequency noise while staying imperceptible.
Fooling automated surveillance cameras: adversarial patches to attack person detection
2 Pith papers cite this work. Polarity classification is still indexing.
abstract
Adversarial attacks on machine learning models have seen increasing interest in the past years. By making only subtle changes to the input of a convolutional neural network, the output of the network can be swayed to output a completely different result. The first attacks did this by changing pixel values of an input image slightly to fool a classifier to output the wrong class. Other approaches have tried to learn "patches" that can be applied to an object to fool detectors and classifiers. Some of these approaches have also shown that these attacks are feasible in the real-world, i.e. by modifying an object and filming it with a video camera. However, all of these approaches target classes that contain almost no intra-class variety (e.g. stop signs). The known structure of the object is then used to generate an adversarial patch on top of it. In this paper, we present an approach to generate adversarial patches to targets with lots of intra-class variety, namely persons. The goal is to generate a patch that is able successfully hide a person from a person detector. An attack that could for instance be used maliciously to circumvent surveillance systems, intruders can sneak around undetected by holding a small cardboard plate in front of their body aimed towards the surveillance camera. From our results we can see that our system is able significantly lower the accuracy of a person detector. Our approach also functions well in real-life scenarios where the patch is filmed by a camera. To the best of our knowledge we are the first to attempt this kind of attack on targets with a high level of intra-class variety like persons.
fields
cs.CV 2years
2019 2verdicts
UNVERDICTED 2representative citing papers
A physical patch suppresses all object detections by YOLOv3 even for distant objects without overlapping them.
citing papers explorer
-
Robust Synthesis of Adversarial Visual Examples Using a Deep Image Prior
A DIP-based optimization produces adversarial perturbations and patches that are more robust to affine transformations than standard high-frequency noise while staying imperceptible.
-
On Physical Adversarial Patches for Object Detection
A physical patch suppresses all object detections by YOLOv3 even for distant objects without overlapping them.