Auflistung nach Schlagwort "de-identification"
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- KonferenzbeitragDeDiM: De-identification using a diffusion model(BIOSIG 2022, 2022) Hidetsugu Uchida, Narishige Abe and Shigefumi YamadaAs a countermeasure against malicious authentication in a face recognition system using a face image obtained from SNS or the like, de-identification methods based on adversarial example have been studied. However, since adversarial example directly uses the gradient information of a face recognition model, it is highly dependent on the model, and a de-identification effect and image quality are difficult to achieve for an unknown recognition model. In this study, we propose a novel de-identification method based on a diffusion model, which has high generalizability to an unknown recognition model by applying minute changes to face shapes. Experiments using LFW showed that the proposed method has a higher de-identification effect for unknown models and better image quality than a conventional method using adversarial example.