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Autori principali: Carr, Thomas, Xu, Depeng, Lu, Aidong
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2405.05428
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author Carr, Thomas
Xu, Depeng
Lu, Aidong
author_facet Carr, Thomas
Xu, Depeng
Lu, Aidong
contents Skeleton-based motion visualization is a rising field in computer vision, especially in the case of virtual reality (VR). With further advancements in human-pose estimation and skeleton extracting sensors, more and more applications that utilize skeleton data have come about. These skeletons may appear to be anonymous but they contain embedded personally identifiable information (PII). In this paper we present a new anonymization technique that is based on motion retargeting, utilizing adversary classifiers to further remove PII embedded in the skeleton. Motion retargeting is effective in anonymization as it transfers the movement of the user onto the a dummy skeleton. In doing so, any PII linked to the skeleton will be based on the dummy skeleton instead of the user we are protecting. We propose a Privacy-centric Deep Motion Retargeting model (PMR) which aims to further clear the retargeted skeleton of PII through adversarial learning. In our experiments, PMR achieves motion retargeting utility performance on par with state of the art models while also reducing the performance of privacy attacks.
format Preprint
id arxiv_https___arxiv_org_abs_2405_05428
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Adversary-Guided Motion Retargeting for Skeleton Anonymization
Carr, Thomas
Xu, Depeng
Lu, Aidong
Computer Vision and Pattern Recognition
Cryptography and Security
Machine Learning
Skeleton-based motion visualization is a rising field in computer vision, especially in the case of virtual reality (VR). With further advancements in human-pose estimation and skeleton extracting sensors, more and more applications that utilize skeleton data have come about. These skeletons may appear to be anonymous but they contain embedded personally identifiable information (PII). In this paper we present a new anonymization technique that is based on motion retargeting, utilizing adversary classifiers to further remove PII embedded in the skeleton. Motion retargeting is effective in anonymization as it transfers the movement of the user onto the a dummy skeleton. In doing so, any PII linked to the skeleton will be based on the dummy skeleton instead of the user we are protecting. We propose a Privacy-centric Deep Motion Retargeting model (PMR) which aims to further clear the retargeted skeleton of PII through adversarial learning. In our experiments, PMR achieves motion retargeting utility performance on par with state of the art models while also reducing the performance of privacy attacks.
title Adversary-Guided Motion Retargeting for Skeleton Anonymization
topic Computer Vision and Pattern Recognition
Cryptography and Security
Machine Learning
url https://arxiv.org/abs/2405.05428