C. Clements, Derek Moody, Adam W. Potter, J. Seay, R. Fellin, M. Buller
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引用次数: 8
摘要
重负荷经常使步兵和急救人员增加肌肉骨骼损伤(MSI)的风险。实时识别过度负荷可以帮助识别士兵何时面临更大的MSI风险。通过主成分分析(PCA),我们建立了22名男性士兵(年龄20±3.5岁,身高1.76±0.09 m,体重83±13 kg)的加载(>35 kg)与卸载(>35 kg) Naïve贝叶斯分类模型。通过七重交叉验证,我们证明了仅使用一个特征,我们的模型就能在90%的时间内准确地对重负载和卸载进行分类。这项技术可以用于实时加速度计传感器,并有望用于更复杂的步态分析。
Loaded and unloaded foot movement differentiation using chest mounted accelerometer signatures
Heavy loads often subject foot soldiers and first-responders to increased risk musculoskeletal injury (MSI). Identifying excessive loads in real-time could help identify when soldiers are at greater risk of MSI. Using Principal Component Analysis (PCA) we derived a loaded (>35 kg) versus unloaded Naïve Bayesian classification model from 22 male Soldiers (age 20 ± 3.5 yrs, height 1.76 ± 0.09 m and weight 83 ± 13 kg). Using seven-fold cross validation we demonstrated that using only one feature our model accurately classifies heavily loaded versus unloaded over 90% of the time. This technique lends itself to use in real time accelerometry sensors and shows promise for more complex gait analysis.