Bridging the Visual-to-Physical Gap: Physically Aligned Representations for Fall Risk Analysis
arXiv cs.CV / 3/17/2026
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Key Points
- PHARL addresses the challenge that visually similar motions can lead to different physical outcomes by leveraging physics-aware learning without relying on injury labels.
- The method introduces two constraints: trajectory-level temporal consistency and multi-class physics alignment using simulation-derived contact outcomes to shape embedding geometry.
- PHARL pairs video windows with temporally aligned simulation descriptors to produce local, action-relevant representations while remaining a purely feed-forward inference model.
- Experiments on four public fall-dataset benchmarks show PHARL improves risk-aligned representations over visual baselines and preserves strong fall-detection performance, with a zero-shot ordinality emerging (Head > Trunk > Supported) without explicit ordinal supervision.
- The work reduces reliance on scarce clinical injury labels and demonstrates a path toward physically informed, interpretable risk analysis in vision-based safety systems.
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