The Climber's Grip -- Personalized Deep Learning Models for Fear and Muscle Activity in Climbing
arXiv cs.LG / 3/30/2026
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Key Points
- The study examines how perceived fear during climbing relates to physiological signals and muscle activity, using data collected from EMG, ECG, and motion tracking during lead and top rope climbs.
- Nineteen climbers participated, and fear ratings were gathered across different climb phases to link subjective risk perception with measurable body responses.
- Researchers used a linear mixed-effects model to capture statistical relationships, then moved to deep learning models to model non-linear dynamics and incorporated random effects for personalization.
- Personalized modeling with random effects improved predictive accuracy (lower MSE, MAE, and RMSE) versus non-personalized approaches.
- A key finding is that muscle fatigue is significantly associated with increased fear specifically during lead climbing, suggesting an interaction between physical strain and psychological state.
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