The Climber's Grip -- Personalized Deep Learning Models for Fear and Muscle Activity in Climbing

Agentic AI
Published: arXiv: 2603.26575v1
Authors

Matthias Boeker Dana Swarbrick Ulysse T. A. Côté-Allard Marc T. P. Adam Hugo L. Hammer Pål Halvorsen

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.

Paper Summary

Problem
Climbing is a physically demanding sport that requires both physical and mental strength. Climbers must navigate different types of climbs, including lead and top rope climbing, which involve varying levels of risk and fear. The relationship between fear and muscle activity in climbers is not well understood, making it challenging for climbers to manage their physical and emotional responses during climbs.
Key Innovation
This research paper presents a unique approach to understanding the relationship between fear and muscle activity in climbers. The authors use a combination of statistical modeling and deep learning techniques to develop personalized models that can capture the complex dynamics of this relationship. The innovation lies in the integration of random effects into the deep learning models, which allows for personalized modeling and improved model performance.
Practical Impact
This research has significant practical implications for the climbing community. By understanding the relationship between fear and muscle activity, climbers can develop more effective strategies for managing their physical and emotional responses during climbs. This could lead to improved performance, reduced risk of injury, and enhanced overall climbing experience. Additionally, the personalized models developed in this study could be used to create tailored training programs and feedback systems for climbers.
Analogy / Intuitive Explanation
Imagine you're climbing a rock wall, and your heart is racing with fear. At the same time, your muscles are working hard to propel you up the wall. The relationship between fear and muscle activity is like a seesaw - when fear increases, muscle activity also increases. The researchers in this study used advanced statistical and deep learning techniques to understand this seesaw effect and develop personalized models that can capture the unique dynamics of each climber's experience. By doing so, they can help climbers better manage their fear and muscle activity, leading to improved performance and a safer climbing experience.
Paper Information
Categories:
cs.LG
Published Date:

arXiv ID:

2603.26575v1

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