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Automatic identification of gait events during walking on uneven surfaces

机译:在不平坦表面行走期间的步态事件自动识别

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The accurate detection of gait events is essential for clinical gait analysis. Aside from speed, surface characteristics like planarity and compliance can affect gait kinematics. Therefore detection of kinematic gait events on uneven surfaces may be inaccurate. To date, no study has investigated the possible influence of surface characteristics on gait event detection. Thus, the purpose of this study was to assess and compare the performance of four kinematic-based gait event detection algorithms (horizontal heel heel displacement, foot velocity, heel/toe-PSIS displacement, peak hip extension) during walking on three surfaces with different degrees of planarity. Kinematic and force plate data were collected on thirteen athletes during two self-selected walking speeds at a normal (1.30 +/- 0.03 m/s) and fast pace (1.70 +/- 0.10 m/s). Footstrike and toe-off events were calculated by the algorithms and compared to vertical ground reaction force as a reference. The main findings of the study were: (1) surface configuration had an effect on algorithm accuracy (p < 0.010, 0.84 < d < 2.79); (2) the vertical foot velocity profile provided the lowest RMSE for footstrike (8.8-14.6 ms) during normal walking and toe-off (15.4-24.9 ms) during normal and fast walking on all surfaces; (3) horizontal heel-ankle displacement provided the lowest RMSE for footstrike during fast walking on all surfaces (RMSE: 8.9-13.8 ms). Overall, the vertical foot-velocity algorithm provided low RMSE for all conditions, is easy to apply and thus recommended for gait event detection. (C) 2016 Elsevier B.V. All rights reserved.
机译:准确检测步态事件对于临床步态分析至关重要。除了速度,平坦性和合规性等表面特征可以影响步态运动学。因此,检测在不均匀表面上的运动步态事件可能是不准确的。迄今为止,没有研究对表面特征对步态事件检测的可能影响。因此,本研究的目的是评估和比较四种运动基步态事件检测算法(水平鞋跟位移,脚速,脚跟/ TOE-PSI-PSI-PSIS-PSIS-PSIS-PSIS-PSIS位移,峰值髋部扩展)在三个不同平面度。在正常(1.30 +/- 0.03米/秒的两种自选步的步行速度和快速上(1.70 +/- 0.10米/秒),在十三​​个运动员上收集运动和力板数据。足够的血统和趾梭事件由算法计算,并与垂直地反作用力相比作为参考。该研究的主要结果是:(1)表面配置对算法精度有效果(P <0.010,0.84

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