The Gait Signature of Frailty: Transfer Learning based Deep Gait Models for Scalable Frailty Assessment
arXiv cs.CV / 3/26/2026
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Key Points
- The paper addresses the challenge of scaling frailty assessment in aging medicine, arguing that gait signatures can serve as an objective, sensitive marker of multisystem decline.
- It introduces a publicly available, silhouette-based gait dataset collected in a clinically realistic setting, covering the full frailty spectrum and including older adults who use walking aids.
- The authors evaluate adapting pretrained gait recognition models for frailty classification with limited, imbalanced data, comparing convolutional and hybrid attention architectures.
- They find that transfer strategy matters more than architecture alone: selectively freezing low-level representations while fine-tuning higher-level features improves generalization and stability.
- Interpretability results indicate consistent attention to lower-limb and pelvic regions, supporting the clinical plausibility of the learned gait biomarkers.
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