Figueiredo Joana, Carvalho Simão P, Vilas-Boas João Paulo, Gonçalves Luís M, Moreno Juan C, Santos Cristina P
Center for MicroElectroMechanical Systems (CMEMS), Industrial Electronics Department, University of Minho, Guimarães 4800-058, Portugal.
Faculty of Sport, CIFI2D, and Porto Biomechanics Laboratory (LABIOMEP), University of Porto, Porto 4200-450, Portugal.
Sensors (Basel). 2020 Apr 12;20(8):2185. doi: 10.3390/s20082185.
This paper presents a cost- and time-effective wearable inertial sensor system, the InertialLAB. It includes gyroscopes and accelerometers for the real-time monitoring of 3D-angular velocity and 3D-acceleration of up to six lower limbs and trunk segment and sagittal joint angle up to six joints. InertialLAB followed an open architecture with a low computational load to be executed by wearable processing units up to 200 Hz for fostering kinematic gait data to third-party systems, advancing similar commercial systems. For joint angle estimation, we developed a trigonometric method based on the segments' orientation previously computed by fusion-based methods. The validation covered healthy gait patterns in varying speed and terrain (flat, ramp, and stairs) and including turns, extending the experiments approached in the literature. The benchmarking analysis to MVN BIOMECH reported that InertialLAB provides more reliable measures in stairs than in flat terrain and ramp. The joint angle time-series of InertialLAB showed good waveform similarity (>0.898) with MVN BIOMECH, resulting in high reliability and excellent validity. User-independent neural network regression models successfully minimized the drift errors observed in InertialLAB's joint angles (NRMSE < 0.092). Further, users ranked InertialLAB as good in terms of usability. InertialLAB shows promise for daily kinematic gait analysis and real-time kinematic feedback for wearable third-party systems.
本文介绍了一种经济高效的可穿戴惯性传感器系统——InertialLAB。它包括陀螺仪和加速度计,用于实时监测多达六个下肢和躯干节段的三维角速度和三维加速度,以及多达六个关节的矢状面关节角度。InertialLAB采用开放式架构,计算负载低,可由可穿戴处理单元以高达200Hz的频率执行,以便将运动步态数据传输到第三方系统,超越了类似的商业系统。对于关节角度估计,我们基于先前通过基于融合的方法计算出的节段方向开发了一种三角测量方法。验证涵盖了不同速度和地形(平坦、斜坡和楼梯)下的健康步态模式,包括转弯,扩展了文献中的实验方法。与MVN BIOMECH的基准分析表明,InertialLAB在楼梯上比在平坦地形和斜坡上提供更可靠的测量结果。InertialLAB的关节角度时间序列与MVN BIOMECH显示出良好的波形相似性(>0.898),具有高可靠性和出色的有效性。独立于用户的神经网络回归模型成功地最小化了InertialLAB关节角度中观察到的漂移误差(NRMSE<0.092)。此外,用户对InertialLAB的可用性评价良好。InertialLAB在日常运动步态分析和为可穿戴第三方系统提供实时运动反馈方面显示出前景。