O'Reilly Martin A, Whelan Darragh F, Ward Tomas E, Delahunt Eamonn, Caulfield Brian
a Insight Centre for Data Analytics, University College Dublin , Dublin , Ireland.
b School of Public Health, Physiotherapy and Sports Science , University College Dublin , Dublin , Ireland.
Sports Biomech. 2017 Sep;16(3):342-360. doi: 10.1080/14763141.2017.1314544. Epub 2017 May 19.
Lunges are a common, compound lower limb resistance exercise. If completed with aberrant technique, the increased stress on the joints used may increase risk of injury. This study sought to first investigate the ability of inertial measurement units (IMUs), when used in isolation and combination, to (a) classify acceptable and aberrant lunge technique (b) classify exact deviations in lunge technique. We then sought to investigate the most important features and establish the minimum number of top-ranked features and decision trees that are needed to maintain maximal system classification efficacy. Eighty volunteers performed the lunge with acceptable form and 11 deviations. Five IMUs positioned on the lumbar spine, thighs, and shanks recorded these movements. Time and frequency domain features were extracted from the IMU data and used to train and test a variety of classifiers. A single-IMU system achieved 83% accuracy, 62% sensitivity, and 90% specificity in binary classification and a five-IMU system achieved 90% accuracy, 80% sensitivity, and 92% specificity. A five-IMU set-up can also detect specific deviations with 70% accuracy. System efficiency was improved and classification quality was maintained when using only 20% of the top-ranked features for training and testing classifiers.
弓步蹲是一种常见的复合下肢抗阻运动。如果技术动作不正确,所使用关节上增加的压力可能会增加受伤风险。本研究旨在首先调查惯性测量单元(IMU)单独使用和组合使用时,(a)对可接受和异常弓步蹲技术进行分类的能力,以及(b)对弓步蹲技术中的精确偏差进行分类的能力。然后,我们试图研究最重要的特征,并确定维持最大系统分类效能所需的顶级特征和决策树的最少数量。80名志愿者以可接受的姿势进行弓步蹲,并做出11种偏差动作。放置在腰椎、大腿和小腿上的五个IMU记录了这些动作。从IMU数据中提取时域和频域特征,并用于训练和测试各种分类器。单IMU系统在二元分类中实现了83%的准确率、62%的灵敏度和90%的特异性,五IMU系统实现了90%的准确率、80%的灵敏度和92%的特异性。五IMU设置还能以70%的准确率检测特定偏差。在使用仅20%的顶级特征进行分类器训练和测试时,系统效率得到提高,分类质量得以维持。