...
首页> 外文期刊>Procedia Computer Science >Using Machine Learning and Wearable Inertial Sensor Data for the Classification of Fractal Gait Patterns in Women and Men During Load Carriage
【24h】

Using Machine Learning and Wearable Inertial Sensor Data for the Classification of Fractal Gait Patterns in Women and Men During Load Carriage

机译:使用机器学习和可穿戴惯性传感器数据进行载荷载体中女性和男子分形步态模式的分类

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Ambulating while carrying a mission specific load is one of the most frequently executed occupational tasks for the military, especially for individuals in combat roles. Prolonged ambulation is a naturally dynamic and complex process, characterized by highly multi-dimensional interactions within the gait mechanics of the lower extremity. Recent wearable sensors studies, like inertial measurement unit (IMU)-related gait studies have demonstrated that machine learning (MLN) algorithms and fractal analysis can successfully discriminate between classes, such as movement patterns, injury, age and sex. This study attempts to classify fractal gait patterns of women and men using IMU-based signal data obtained from accelerometer, gyroscope and magnetometer during a 2 km loaded (20 kg) march. Random Forest (RF) MLN algorithm was used to generate a model that can measure the accuracy and identify the importance of IMU-based signal-related fractal variables. A total of 18 variables were calculated using 2 fractal methods, detrended fluctuation analysis (DFA) and wavelet transform-based power spectral density (PSD), from 3 IMU-based signals in their 3 axes (medial-lateral, vertical and anterior-posterior). A total of 33 healthy adults (17 men [26.7±5.9 years] and 16 women [25.2±4.5 years]) volunteered for this study. A 9-axis IMU sensor was attached to each participant at each of the following locations: feet, shanks, thighs and lumbar spine. An independent training-testing approach, called one-vs-one (i.e.,variables from one IMU-based signal were trained and tested using another IMU-based signal) was applied to determine the classification accuracy (i.e.,similarities between IMUs) and variable importance (score ranges: 0.0-1.0) measures. These values were then used to select the variables that best independently describe the rank in classification margin. The results from each IMU sensor placement based on the fractal values showed ‘moderate’ accuracy (50-75%), with the exception of two cases: the left shank yielded ‘good’ accuracy (80.1%) compared with the right shank, and the right thigh generated ‘poor’ accuracy (48.9%) compared with the left foot. No IMU location showed excellent accuracy (>90%). The results indicate that each IMU placement location has their own fractal patterns that are not similar to another IMU location in terms of sex classification. The analysis of the variable importance in the classification margin showed that most of the PSD resulted variables were classified as ‘most important’ compared with the DFA resulted variables. IMU sensors, and the associated analyses, could be used during military load carriage to evaluate changes in gait resulting from injury, fatigue or overtraining.
机译:携带任务特定负载的借方是军队最常见的职业任务之一,特别是对于战斗角色的个人。长时间的气动是一种自然的动态和复杂的过程,其特征在于下肢的步态机械内的高度多维相互作用。最近可穿戴传感器的研究,如惯性测量单元(IMU) - 相关的步态研究表明,机器学习(MLN)算法和分形分析可以成功地区分类别,例如运动模式,伤害,年龄和性别。本研究试图使用从加速度计,陀螺仪和磁力仪的基于IMU的信号数据进行分类的女性和男性的分形步态图案,在2公里(20公斤)3月期间。随机森林(RF)MLN算法用于生成可以测量准确性的模型,并确定基于IMU的信号相关分形变量的重要性。使用2个分形方法,减法的波动分析(DFA)和基于小波变换的功率谱密度(PSD),从其3个轴上的3个IMU的信号(内侧,垂直和前后后,使用了18个变量)。共有33名健康成年人(17名男子[26.7±5.9岁]和16名女性[25.2±4.5岁])本研究自愿。在以下每个地点的每个参与者附加9轴IMU传感器:脚,柄,大腿和腰椎。应用了一个独立的训练测试方法,称为一VS-ON(即,使用基于IMU的信号的来自基于IMU的信号的变量)应用于确定分类准确性(即,IMU之间的相似性)和变量重要性(分数范围:0.0-1.0)措施。然后使用这些值来选择最能独立地描述分类边缘等级的变量。基于分形值的每个IMU传感器放置的结果显示了“中等”精度(50-75%),除两种情况外:左柄率为“良好”的准确性(80.1%)与右侧柄相比,与左脚相比,大腿的右大腿精度(48.9%)产生了“差”。没有IMU位置显示出优异的精度(> 90%)。结果表明,每个IMU放置位置都有自己的分形模式,与性分类方面没有与另一个IMU位置类似。分析保证金中的变量重要性显示,与DFA产生的变量相比,大多数PSD所产生的变量被归类为“最重要”。 IMU传感器和相关的分析可以在军事载荷期间使用,以评估因伤害,疲劳或过度训练而导致的步态的变化。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号