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Main Authors: Wesely, Sophia, Hofer, Ella, Curth, Robin, Paryani, Shyam, Mills, Nicole, Ueberschär, Olaf, Westermayr, Julia
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.04764
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author Wesely, Sophia
Hofer, Ella
Curth, Robin
Paryani, Shyam
Mills, Nicole
Ueberschär, Olaf
Westermayr, Julia
author_facet Wesely, Sophia
Hofer, Ella
Curth, Robin
Paryani, Shyam
Mills, Nicole
Ueberschär, Olaf
Westermayr, Julia
contents Over the past four decades, cheerleading has evolved from a sideline activity at major sporting events into a professional, competitive sport with growing global popularity. Evaluating tumbling elements in cheerleading relies on both objective measures and subjective judgments, such as difficulty and execution quality. However, the complexity of tumbling - encompassing team synchronicity, ground interactions, choreography, and artistic expression - makes objective assessment challenging. Artificial intelligence (AI) has revolutionized various scientific fields and industries through precise data-driven analyses, yet their application in acrobatic sports remains limited despite significant potential for enhancing performance evaluation and coaching. This study investigates the feasibility of using an AI-based approach with data from a single inertial measurement unit to accurately identify and objectively assess tumbling elements in standard cheerleading routines. A sample of 16 participants (13 females, 3 males) from a Division I collegiate cheerleading team wore a single inertial measurement unit at the dorsal pelvis. Over a 4-week seasonal preparation period, 1102 tumbling elements were recorded during regular practice sessions. Using triaxial accelerations and rotational speeds, various ML algorithms were employed to classify and evaluate the execution of tumbling manoeuvres. Results indicate that certain machine learning models can effectively identify different tumbling elements despite inter-individual variability and data noise, achieving high accuracy. These findings demonstrate the significant potential for integrating AI-driven assessments into cheerleading and other acrobatic sports, providing objective metrics that complement traditional judging methods.
format Preprint
id arxiv_https___arxiv_org_abs_2503_04764
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Artificial intelligence for objective assessment of acrobatic movements: How to apply machine learning for identifying tumbling elements in cheer sports
Wesely, Sophia
Hofer, Ella
Curth, Robin
Paryani, Shyam
Mills, Nicole
Ueberschär, Olaf
Westermayr, Julia
Computers and Society
Over the past four decades, cheerleading has evolved from a sideline activity at major sporting events into a professional, competitive sport with growing global popularity. Evaluating tumbling elements in cheerleading relies on both objective measures and subjective judgments, such as difficulty and execution quality. However, the complexity of tumbling - encompassing team synchronicity, ground interactions, choreography, and artistic expression - makes objective assessment challenging. Artificial intelligence (AI) has revolutionized various scientific fields and industries through precise data-driven analyses, yet their application in acrobatic sports remains limited despite significant potential for enhancing performance evaluation and coaching. This study investigates the feasibility of using an AI-based approach with data from a single inertial measurement unit to accurately identify and objectively assess tumbling elements in standard cheerleading routines. A sample of 16 participants (13 females, 3 males) from a Division I collegiate cheerleading team wore a single inertial measurement unit at the dorsal pelvis. Over a 4-week seasonal preparation period, 1102 tumbling elements were recorded during regular practice sessions. Using triaxial accelerations and rotational speeds, various ML algorithms were employed to classify and evaluate the execution of tumbling manoeuvres. Results indicate that certain machine learning models can effectively identify different tumbling elements despite inter-individual variability and data noise, achieving high accuracy. These findings demonstrate the significant potential for integrating AI-driven assessments into cheerleading and other acrobatic sports, providing objective metrics that complement traditional judging methods.
title Artificial intelligence for objective assessment of acrobatic movements: How to apply machine learning for identifying tumbling elements in cheer sports
topic Computers and Society
url https://arxiv.org/abs/2503.04764