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头部加速事件的定量视频分析:综述

Quantitative video analysis of head acceleration events: a review.

作者信息

Aston Thomas, Teixeira-Dias Filipe

机构信息

Institute for Infrastructure and Environment (IIE), School of Engineering, The University of Edinburgh, Edinburgh, United Kingdom.

出版信息

Front Bioeng Biotechnol. 2025 Aug 20;13:1658222. doi: 10.3389/fbioe.2025.1658222. eCollection 2025.

Abstract

The biomechanics of head acceleration events (HAEs) in sport have received increasing attention due to growing concern over concussion and long-term neurodegenerative disease risk. While wearable sensors, such as instrumented mouthguards (iMGs), are now commonly used to measure HAEs, these devices face well-documented challenges, including poor skull coupling, limited compliance, and high false-positive rates. Video footage is routinely collected in sports for performance analysis, and is a perhaps underutilised source for both retrospective and measurement surrounding HAEs. Traditionally used to confirm HAE exposure in wearable sensor studies, video has more recently been explored as a quantitative tool in its own right. This review synthesises the current state of the art in video-based measurement of HAEs, with a particular focus on videogrammetric methods, including manual point tracking and model-based image matching. Recent advances in computer vision and deep learning that offer the potential to automate and extend these approaches are also examined. Key limitations of current video-based methods are discussed, alongside opportunities to improve their scalability, accuracy, and biomechanical insight. By consolidating evidence across traditional and emerging approaches, this review highlights the potential of video as a practical and valuable measurement source for quantitative measurement and modelling of HAEs in sport.

摘要

由于对脑震荡和长期神经退行性疾病风险的日益关注,运动中头部加速事件(HAEs)的生物力学受到了越来越多的关注。虽然可穿戴传感器,如仪器化护齿(iMGs),现在常用于测量HAEs,但这些设备面临着诸多有据可查的挑战,包括颅骨耦合不佳、依从性有限和假阳性率高。体育赛事中通常会收集视频片段用于性能分析,这可能是一个未得到充分利用的HAEs回顾性研究和测量来源。视频传统上用于在可穿戴传感器研究中确认HAE暴露情况,最近它本身也被作为一种定量工具进行探索。本综述综合了基于视频的HAEs测量的当前技术水平,特别关注摄影测量方法,包括手动点跟踪和基于模型的图像匹配。还研究了计算机视觉和深度学习方面的最新进展,这些进展为自动化和扩展这些方法提供了潜力。讨论了当前基于视频的方法的关键局限性,以及提高其可扩展性、准确性和生物力学洞察力的机会。通过整合传统和新兴方法的证据,本综述强调了视频作为运动中HAEs定量测量和建模的实用且有价值的测量来源的潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f243/12405429/3f6d3048499d/fbioe-13-1658222-g001.jpg

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