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Natural Face Anonymization via Latent Space Layers Swapping | IEEE Conference Publication | IEEE Xplore

Natural Face Anonymization via Latent Space Layers Swapping


Abstract:

Machine learning is widely recognized as a key driver of technological progress. Artificial Intelligence (AI) applications that interact with humans require access to vas...Show More

Abstract:

Machine learning is widely recognized as a key driver of technological progress. Artificial Intelligence (AI) applications that interact with humans require access to vast quantities of human image data. However, the use of large, real-world image datasets containing faces raises serious concerns about privacy. In this paper, we examine the issue of anonymizing image datasets that include faces. Our approach modifies the facial features that contribute to personal identification, resulting in an altered facial appearance that conceals the person's identity. This is achieved without compromising other visual features such as posture, facial expression, and hairstyle while maintaining a natural-looking appearance. Finally, Our method offers adjustable levels of privacy, computationally efficient, and has demonstrated superior performance compared to existing methods.
Date of Conference: 09-12 July 2023
Date Added to IEEE Xplore: 28 August 2023
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Conference Location: Gammarth, Tunisia

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