PLAN Group, Schulich School of Engineering, The University of Calgary, Calgary, AB, Canada.
Sensors (Basel). 2013 Jan 24;13(2):1539-62. doi: 10.3390/s130201539.
Microelectromechanical Systems (MEMS) technology is playing a key role in the design of the new generation of smartphones. Thanks to their reduced size, reduced power consumption, MEMS sensors can be embedded in above mobile devices for increasing their functionalities. However, MEMS cannot allow accurate autonomous location without external updates, e.g., from GPS signals, since their signals are degraded by various errors. When these sensors are fixed on the user's foot, the stance phases of the foot can easily be determined and periodic Zero velocity UPdaTes (ZUPTs) are performed to bound the position error. When the sensor is in the hand, the situation becomes much more complex. First of all, the hand motion can be decoupled from the general motion of the user. Second, the characteristics of the inertial signals can differ depending on the carrying modes. Therefore, algorithms for characterizing the gait cycle of a pedestrian using a handheld device have been developed. A classifier able to detect motion modes typical for mobile phone users has been designed and implemented. According to the detected motion mode, adaptive step detection algorithms are applied. Success of the step detection process is found to be higher than 97% in all motion modes.
微机电系统(MEMS)技术在新一代智能手机的设计中发挥着关键作用。由于其尺寸减小、功耗降低,MEMS 传感器可以嵌入到上述移动设备中,从而增加其功能。然而,MEMS 无法在没有外部更新的情况下(例如 GPS 信号)进行准确的自主定位,因为它们的信号会受到各种误差的影响而降级。当这些传感器固定在用户的脚上时,很容易确定脚的站立阶段,并定期进行零速度更新(ZUPT)来限制位置误差。当传感器在手中时,情况变得更加复杂。首先,手部运动可以与用户的一般运动解耦。其次,惯性信号的特征可能因携带模式而异。因此,已经开发了用于使用手持设备描述行人步态周期的算法。设计并实现了一种能够检测到典型移动电话用户运动模式的分类器。根据检测到的运动模式,应用自适应的步长检测算法。在所有运动模式下,步长检测过程的成功率都高于 97%。