Rethinking Adversarial Examples for Location Privacy Protection

06/28/2022
by   Trung-Nghia Le, et al.
0

We have investigated a new application of adversarial examples, namely location privacy protection against landmark recognition systems. We introduce mask-guided multimodal projected gradient descent (MM-PGD), in which adversarial examples are trained on different deep models. Image contents are protected by analyzing the properties of regions to identify the ones most suitable for blending in adversarial examples. We investigated two region identification strategies: class activation map-based MM-PGD, in which the internal behaviors of trained deep models are targeted; and human-vision-based MM-PGD, in which regions that attract less human attention are targeted. Experiments on the Places365 dataset demonstrated that these strategies are potentially effective in defending against black-box landmark recognition systems without the need for much image manipulation.

READ FULL TEXT

page 3

page 4

research
06/21/2019

Adversarial Examples to Fool Iris Recognition Systems

Adversarial examples have recently proven to be able to fool deep learni...
research
03/22/2019

Imperceptible, Robust, and Targeted Adversarial Examples for Automatic Speech Recognition

Adversarial examples are inputs to machine learning models designed by a...
research
09/05/2021

Training Meta-Surrogate Model for Transferable Adversarial Attack

We consider adversarial attacks to a black-box model when no queries are...
research
02/07/2023

Toward Face Biometric De-identification using Adversarial Examples

The remarkable success of face recognition (FR) has endangered the priva...
research
04/26/2022

Self-recoverable Adversarial Examples: A New Effective Protection Mechanism in Social Networks

Malicious intelligent algorithms greatly threaten the security of social...
research
05/26/2023

On Evaluating Adversarial Robustness of Large Vision-Language Models

Large vision-language models (VLMs) such as GPT-4 have achieved unpreced...

Please sign up or login with your details

Forgot password? Click here to reset