用于训练辅助的人体姿势估计:系统文献综述

Gisela Miranda Difini, M. G. Martins, Jorge L. V. Barbosa
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引用次数: 11

摘要

人体姿态估计是计算机视觉的一个重要领域,它旨在从视频和图像中预测个体的姿态。它已被用于许多不同的领域,包括人机交互、运动分析、监视、动作预测、动作纠正、增强现实、虚拟现实和医疗保健。这篇综述的重点是在训练辅助的人体姿态估计中最重要的贡献。在各种体育活动中,正确地执行动作是至关重要的,既可以提高表现,又可以减少受伤的风险。人体姿势估计可以帮助运动员更好地分析他们的运动质量。系统评价研究在5个数据库中进行,包括2011年1月至2021年3月的文章。最初的搜索结果是129篇文章,其中8篇在应用过滤标准后被选中。此外,本研究还提出了姿态估计相关的挑战,这些挑战是近年来使用的姿态估计方法,其中选定的文章重点关注的具体活动,以及人体姿态估计方法的分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Pose Estimation for Training Assistance: a Systematic Literature Review
Human pose estimation is an important field of Computer Vision that aims to predict poses of individuals from videos and images. It has been used in many different areas including human-computer interaction, motion analysis, surveillance, action prediction, action correction, augmented reality, virtual reality, and healthcare. This review is focused on the most significant contributions in human pose estimation for training assistance. Executing movements correctly is crucial in all kinds of physical activities, both to increase performance and reduce risk of injury. Human pose estimation is poised to help athletes better analyse the quality of their movements. The systematic review study was conducted in five databases including articles from January 2011 to March 2021. The initial search resulted in 129 articles, of which 8 were selected after applying the filtering criteria. Moreover this study presents the challenges related to pose estimation, which pose estimation methods have been used in recent years, in which specific activities the selected articles have focused on, and a taxonomy of human pose estimation methods.
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