ArXiv TLDR

GaitProtector: Impersonation-Driven Gait De-Identification via Training-Free Diffusion Latent Optimization

🐦 Tweet
2605.12431

Huiran Duan, Qian Zhou, Zhongliang Guo, Junhao Dong, Yuqi Li + 2 more

cs.CV

TLDR

GaitProtector uses a training-free diffusion method to de-identify gait by impersonating a target identity, balancing privacy with motion quality.

Key contributions

  • Introduces GaitProtector, an impersonation-driven framework for gait de-identification.
  • Leverages a target identity as a semantic anchor to preserve plausible gait patterns via a diffusion prior.
  • Achieves training-free de-identification by optimizing latent codes of a pretrained 3D video diffusion model.
  • Significantly reduces gait identification accuracy while maintaining visual quality and downstream utility.

Why it matters

GaitProtector offers a training-free gait de-identification, balancing privacy and utility. It leverages diffusion models and impersonation to suppress identity while preserving motion dynamics, providing a practical solution for sensitive analysis.

Original Abstract

Conventional gait de-identification methods often encounter an inherent trade-off: they either provide insufficient identity suppression or introduce spatiotemporal distortions that impede structure-sensitive downstream applications. We propose GaitProtector, an impersonation-driven gait de-identification framework that formulates privacy protection as a unified objective with two tightly coupled components: (i) obfuscation, which repels the protected gait from the source identity, and (ii) impersonation, which attracts it toward a selected target identity. The target identity serves as a semantic anchor that biases optimization toward structurally plausible gait patterns under the pretrained diffusion prior, helping preserve dominant body shape and motion dynamics. We instantiate this idea through a training-free diffusion latent optimization pipeline. Instead of retraining a generator for each dataset, we invert each input silhouette sequence into the latent trajectory of a pretrained 3D video diffusion model and iteratively optimize latent codes with a differentiable adversarial objective to synthesize protected gaits. Experiments on the CASIA-B dataset show that GaitProtector achieves a 56.7% impersonation success rate under black-box gait recognition and reduces Rank-1 identification accuracy from 89.6% to 15.0%, while maintaining favorable visual and temporal quality. We further evaluate downstream utility on the Scoliosis1K dataset, where diagnostic accuracy decreases only from 91.4% to 74.2%. To the best of our knowledge, this work is the first to leverage pretrained 3D diffusion priors in a training-free manner for silhouette-based gait de-identification.

📬 Weekly AI Paper Digest

Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.