笔记本电脑
计算机科学
运动评估
杠杆(统计)
姿势
观点
人机交互
人工智能
手势
数据科学
多媒体
作者
Jan Stenum,Kendra M. Cherry-Allen,Connor O. Pyles,Rachel Reetzke,Michael F. Vignos,Ryan T. Roemmich
出处
期刊:Sensors
[MDPI AG]
日期:2021-11-03
卷期号:21 (21): 7315-7315
被引量:1
摘要
The emergence of pose estimation algorithms represents a potential paradigm shift in the study and assessment of human movement. Human pose estimation algorithms leverage advances in computer vision to track human movement automatically from simple videos recorded using common household devices with relatively low-cost cameras (e.g., smartphones, tablets, laptop computers). In our view, these technologies offer clear and exciting potential to make measurement of human movement substantially more accessible; for example, a clinician could perform a quantitative motor assessment directly in a patient’s home, a researcher without access to expensive motion capture equipment could analyze movement kinematics using a smartphone video, and a coach could evaluate player performance with video recordings directly from the field. In this review, we combine expertise and perspectives from physical therapy, speech-language pathology, movement science, and engineering to provide insight into applications of pose estimation in human health and performance. We focus specifically on applications in areas of human development, performance optimization, injury prevention, and motor assessment of persons with neurologic damage or disease. We review relevant literature, share interdisciplinary viewpoints on future applications of these technologies to improve human health and performance, and discuss perceived limitations.
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