Skeleton-Based Posture Classification to Promote Safer Walker-Assisted Gait in Older Adults
arXiv cs.CV / 5/5/2026
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Key Points
- The study addresses fall prevention for older adults by using machine learning to classify walker usage, whether a user is standing or sitting, and multiple postures in smart walkers.
- It compares several modeling approaches, including geometric methods, XGBoost, SVM, and multiple deep learning architectures, to determine which best captures skeleton-based motion/posture patterns.
- XGBoost and the geometric approach delivered the strongest overall results, with XGBoost reaching 99.84% (walker choice) and 99.69% (standing vs. sitting) training accuracy.
- For posture recognition, the geometric approach achieved 89.9% accuracy across 8 postures, while XGBoost reached 99.24% (training) for 17 postures.
- The findings suggest that machine learning-based human-robot interaction can improve smart-walker safety and support fall prevention through more reliable posture and activity awareness.
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