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.

Abstract

Climbing is a multifaceted sport that combines physical demands and emotional and cognitive challenges. Ascent styles differ in fall distance with lead climbing involving larger falls than top rope climbing, which may result in different perceived risk and fear. In this study, we investigated the psychophysiological relationship between perceived fear and muscle activity in climbers using a combination of statistical modeling and deep learning techniques. We conducted an experiment with 19 climbers, collecting electromyography (EMG), electrocardiography (ECG) and arm motion data during lead and top rope climbing. Perceived fear ratings were collected for the different phases of the climb. Using a linear mixed-effects model, we analyzed the relationships between perceived fear and physiological measures. To capture the non-linear dynamics of this relationship, we extended our analysis to deep learning models and integrated random effects for a personalized modeling approach. Our results showed that random effects improved model performance of the mean squared error (MSE), mean absolute error (MAE) and root mean squared error (RMSE). The results showed that muscle fatigue correlates significantly with increased fear during \textit{lead climbing}. This study highlights the potential of combining statistical and deep learning approaches for modeling the interplay between psychological and physiological states during climbing.