Title
Conditional Adversarial Camera Model Anonymization.
Abstract
The model of camera that was used to capture a particular photographic image (model attribution) is typically inferred from high-frequency model-specific artifacts present within the image. Model anonymization is the process of transforming these artifacts such that the apparent capture model is changed. We propose a conditional adversarial approach for learning such transformations. In contrast to previous works, we cast model anonymization as the process of transforming both high and low spatial frequency information. We augment the objective with the loss from a pre-trained dual-stream model attribution classifier, which constrains the generative network to transform the full range of artifacts. Quantitative comparisons demonstrate the efficacy of our framework in a restrictive non-interactive black-box setting.
Year
DOI
Venue
2020
10.1007/978-3-030-66823-5_13
ECCV Workshops
Keywords
DocType
Citations 
Camera model anonymization,Conditional generative adversarial nets,Adversarial training,Non-interactive black-box attacks,Image editing/manipulation,Camera model attribution/identification
Conference
0
PageRank 
References 
Authors
0.34
5
3
Name
Order
Citations
PageRank
Jerone T. A. Andrews100.34
yidan zhang2102.54
Lewis D. Griffin338145.96