CIAGAN: Conditional Identity Anonymization Generative Adversarial
Networks
- URL: http://arxiv.org/abs/2005.09544v2
- Date: Mon, 30 Nov 2020 17:12:44 GMT
- Title: CIAGAN: Conditional Identity Anonymization Generative Adversarial
Networks
- Authors: Maxim Maximov, Ismail Elezi and Laura Leal-Taix\'e
- Abstract summary: CIAGAN is a model for image and video anonymization based on conditional generative adversarial networks.
Our model is able to remove the identifying characteristics of faces and bodies while producing high-quality images and videos.
- Score: 12.20367903755194
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The unprecedented increase in the usage of computer vision technology in
society goes hand in hand with an increased concern in data privacy. In many
real-world scenarios like people tracking or action recognition, it is
important to be able to process the data while taking careful consideration in
protecting people's identity. We propose and develop CIAGAN, a model for image
and video anonymization based on conditional generative adversarial networks.
Our model is able to remove the identifying characteristics of faces and bodies
while producing high-quality images and videos that can be used for any
computer vision task, such as detection or tracking. Unlike previous methods,
we have full control over the de-identification (anonymization) procedure,
ensuring both anonymization as well as diversity. We compare our method to
several baselines and achieve state-of-the-art results.
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