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首页> 外文期刊>Journal of Biomechanics >A machine learning approach to estimate Minimum Toe Clearance using Inertial Measurement Units
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A machine learning approach to estimate Minimum Toe Clearance using Inertial Measurement Units

机译:一种使用惯性测量单元估算最小脚趾间隙的机器学习方法

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Falls are the primary cause of accidental injuries (52%) and one of the leading causes of death in individuals aged 65 and above. More than 50% of falls in healthy older adults are due to tripping while walking. Minimum toe clearance (i.e., minimum height of the toe above the ground during the mid-swing phase - MTC) has been investigated as an indicator of tripping risk. There is increasing demand for practicable gait monitoring using wearable sensors such as Inertial Measurement Units (IMU) comprising accelerometers and gyroscopes due to their wearability, compactness and low cost. A major limitation however, is intrinsic noise making acceleration integration unreliable and inaccurate for estimating MTC height from IMU data. A machine learning approach to MTC height estimation was investigated in this paper incorporating features from both raw and integrated inertial signals to train Generalized Regression Neural Networks (GRNN) models using a hill-climbing feature-selection method. The GRNN based MTC height predictions demonstrated root-mean-square-error (RMSE) of 6.6 mm with 9 optimum features for young adults and 7.1 mm RMSE with 5 features for the older adults during treadmill walking. The GRNN based MTC height estimation method devised in this project represents approximately 68% less RMSE than other estimation techniques. The research findings show a strong potential for gait monitoring outside the laboratory to provide real-time MTC height information during everyday locomotion. (C) 2015 Elsevier Ltd. All rights reserved.
机译:跌倒是造成意外伤害的主要原因(52%),也是65岁及65岁以上人群死亡的主要原因之一。在健康的老年人中,有超过50%的跌倒是由于走路时绊倒。已调查最小脚趾间隙(即,摆动中途阶段脚趾离地面的最小高度-MTC)作为绊倒风险的指标。由于使用了可穿戴的传感器,例如包括加速度计和陀螺仪的惯性测量单元(IMU),由于它们的可穿戴性,紧凑性和低成本,对实用步态监测的需求不断增长。然而,一个主要限制是固有噪声使加速度积分不可靠,并且无法从IMU数据估算MTC高度。本文研究了一种机器学习方法来估计MTC高度,该方法结合了原始和集成惯性信号的特征,使用爬山特征选择方法来训练广义回归神经网络(GRNN)模型。基于GRNN的MTC高度预测表明,在跑步机行走过程中,均方根误差(RMSE)为6.6毫米,对年轻人有9个最佳特征,而7.1毫米RMSE对老年人有5个特征。在此项目中设计的基于GRNN的MTC高度估算方法比其他估算技术约少68%的RMSE。研究结果表明,在实验室外进行步态监测的潜力很大,可以在日常运动中提供实时的MTC高度信息。 (C)2015 Elsevier Ltd.保留所有权利。

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