3260 papers • 126 benchmarks • 313 datasets
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These leaderboards are used to track progress in face-anonymization-5
Use these libraries to find face-anonymization-5 models and implementations
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A novel architecture which is able to automatically anonymize faces in images while retaining the original data distribution is proposed, based on a conditional generative adversarial network, which generates highly realistic faces with a seamless transition between the generated face and the existing background.
CIAGAN, a model for image and video anonymization based on conditional generative adversarial networks, is proposed and developed, 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.
This paper proposes a novel anonymization framework (DeepPrivacy2) for realistic anonymization of human figures and faces, and introduces a new large and diverse dataset for full-body synthesis, which significantly improves image quality and diversity of generated images.
GANonymization, a novel face anonymization framework with facial expression-preserving abilities, is introduced, based on a high-level representation of a face which is synthesized into an anonymized versionbased on a generative adversarial network (GAN).
This study demonstrates that realistic anonymization can enable privacy-preserving computer vision development with minimal performance degradation across a range of important computer vision benchmarks.
The proposed DisguisOR addresses privacy on a scene level and has the potential to facilitate further research in SDS, enabling more realistic anonymization that is less detrimental to downstream tasks.
Adding a benchmark result helps the community track progress.