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Estimating GRF (Ground Reaction Force) and Calibrating CoP (Center of Pressure) of an Insole Measured by an Low-Cost Sensor with Neural Network

机译:通过具有神经网络的低成本传感器测量的鞋垫测量的GRF(接地反作用力)和校准COP(压力中心)

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CoP (Center of pressure) and GRF (ground reaction force) of insole are very important values in biomechanics area. They are using for calculating kinematics, dynamics of human or controlling of robot like exoskeletons. As an alternative to high-cost insole pressure sensors that can measure the insole pressure distribution and calculate the center of pressure, a FSR (Force Sensing Resistor) foot sensor with FSR sensors on the bottom of the insole was developed. However, the value of the CoP calculated using fixed coordinates and the values of FSR sensors were not sufficiently accurate and FSR sensors cannot cover the whole area of the insole so it can not calculate the magnitude of GRF. Hence, in this paper, a model capable of estimating of GRF and calibrating CoP measured by FSR foot sensors using neural network fitting is introduced. These processes rely on the fact that foot has protruding areas that are initially in contact with the ground while walking, with the size and magnitude of the pressure exerted by other non-protruding areas estimated using the the constant patterns of the pressure values of the protruding areas. This paper presents the division of the insole based on anatomical shape of foot, estimations of appropriate numvers and locations of the FSR sensors, creation of virtual forces and their floating coordinates, development of algorithms with neural network fitting for estimating the values, and calculation of the estimated GRF and calibrated CoP. Validation is conducted by comparing the Values with those of F-Scan System (Tekscan, Inc.)
机译:COP(压力中心)和鞋垫的GRF(地面反作用力)是生物力学区域的非常重要的价值。它们用于计算运动学,人体动态或控制机器人,如外骨骼。作为能够测量鞋垫压力分布并计算压力中心的高成本鞋垫压力传感器的替代方案,开发了具有鞋垫底部的FSR传感器的FSR(力传感电阻)脚传感器。但是,使用固定坐标计算的警察的值和FSR传感器的值不是足够的准确的,并且FSR传感器不能覆盖鞋垫的整个区域,因此它不能计算GRF的大小。因此,在本文中,引入了一种能够使用神经网络配件测量的FSR英尺传感器测量的GRF和校准COP的模型。这些过程依赖于脚具有最初在行走的同时与地面接触的突出区域的事实,其尺寸和大小由使用突出的压力值的恒定图案估计的其他非突出区域施加的压力地区。本文介绍了基于解剖学的脚孔的划分,估算了对FSR传感器的适当数字和位置,虚拟力的创建和浮动坐标,具有神经网络拟合的算法,用于估计值和计算估计的GRF和校准警察。通过将值与F扫描系统(TEKSCAN,INC.)进行比较来进行验证

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