Causality and "In-the-Wild" Video-Based Person Re-ID: A Survey
- URL: http://arxiv.org/abs/2505.20540v2
- Date: Wed, 28 May 2025 10:53:23 GMT
- Title: Causality and "In-the-Wild" Video-Based Person Re-ID: A Survey
- Authors: Md Rashidunnabi, Kailash Hambarde, Hugo Proença,
- Abstract summary: Video-based person re-identification (Re-ID) remains brittle in real-world deployments despite impressive benchmark performance.<n>This survey examines the emerging role of causal reasoning as a principled alternative to traditional correlation-based approaches.
- Score: 14.370360290704197
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Video-based person re-identification (Re-ID) remains brittle in real-world deployments despite impressive benchmark performance. Most existing models rely on superficial correlations such as clothing, background, or lighting that fail to generalize across domains, viewpoints, and temporal variations. This survey examines the emerging role of causal reasoning as a principled alternative to traditional correlation-based approaches in video-based Re-ID. We provide a structured and critical analysis of methods that leverage structural causal models, interventions, and counterfactual reasoning to isolate identity-specific features from confounding factors. The survey is organized around a novel taxonomy of causal Re-ID methods that spans generative disentanglement, domain-invariant modeling, and causal transformers. We review current evaluation metrics and introduce causal-specific robustness measures. In addition, we assess practical challenges of scalability, fairness, interpretability, and privacy that must be addressed for real-world adoption. Finally, we identify open problems and outline future research directions that integrate causal modeling with efficient architectures and self-supervised learning. This survey aims to establish a coherent foundation for causal video-based person Re-ID and to catalyze the next phase of research in this rapidly evolving domain.
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