Real-Time Boxing Form Assessment: A Comparative Study of Mediapipe Framework and Human Coaching
Project Abstract
Motivated by the opportunity to enhance sports coaching through technology, this project focuses on real-time feedback in boxing, using the Mediapipe framework for rapid pose detection. By merging machine learning with live video input, the system aims to revolutionize coaching experiences, providing insights previously available only through human observation. Positioned as a comparative study, this research evaluates the efficacy of the Mediapipe framework as well as some analytical techniques (including machine learning and algorithmic approaches) against traditional human coaching in boxing form assessment, addressing questions of accuracy, reliability, and usability. Employing a mixed-methods approach, it combines quantitative analysis of boxing metrics with qualitative feedback from coaches and participants. Initial findings suggest the developed system accurately analyses key form aspects, offering consistent assessments, particularly for novices, while human coaching provides nuanced feedback. This research contributes to the understanding of how technology can augment traditional coaching methods, potentially democratizing access to high-quality coaching and paving the way for future innovations in sports training and performance analysis.
Keywords: Computer Vision, Real-time Analysis, Machine Learning
Conference Details
Session: Poster Session A at Poster Stand 31
Location: Sir Stanley Clarke Auditorium at Tuesday 7th 13:30 – 17:00
Markers: Daniele Cafolla, Eike Neumann
Course: BSc Computer Science, 3rd Year
Future Plans: I’m continuing studies