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Sensor optimization in smart insoles for post-stroke gait asymmetries using total variation and L1 distances

机译:智能鞋垫中的传感器优化,用于使用总变化和L1距离的冲程后步态不对称

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摘要

By deploying pressure sensors on insoles, the forces exerted by the different parts of the foot when performing tasks standing up can be captured. The number and location of sensors to use are important factors in order to enhance the accuracy of parameters used in assessment while minimizing the cost of the device by reducing the number of deployed sensors. Selecting the best locations and the required number of sensors depends on the application and the features that we want to assess. In this paper, we present a computational process to select the optimal set of sensors to characterize gait asymmetries and plantar pressure patterns for stroke survivors based upon the total variation and L1 distances. The proposed mechanism is ecologically validated in a real environment with 14 stroke survivors and 14 control users. The number of sensors is reduced to 4, minimizing the cost of the device both for commercial users and companies and enhancing the cost to benefit ratio for its uptake from a national healthcare system. The results show that the sensors that better represent the gait asymmetries for healthy controls are the sensors under the big toe and midfoot and the sensors in the forefoot and midfoot for stroke survivors. The results also show that all four regions of the foot (toes, forefoot, midfoot, and heel) play an important role for plantar pressure pattern reconstruction for stroke survivors, while the heel and forefoot region are more prominent for healthy controls.
机译:通过在鞋垫上部署压力传感器,可以捕获站立时执行脚部不同部位施加的力。要使用的传感器的数量和位置是重要的因素,以提高评估中使用的参数的准确性,同时通过减少部署的传感器的数量来最小化设备的成本。选择最佳位置和所需的传感器数量取决于应用程序和我们要评估的功能。在本文中,我们提出了一个计算过程,以基于总变化量和L1距离来选择最佳传感器组,以表征中风幸存者的步态不对称和足底压力模式。所提出的机制在具有14个中风幸存者和14个控制用户的真实环境中进行了生态验证。传感器的数量减少到4个,从而最大限度地减少了商业用户和公司的设备成本,并提高了从国家医疗保健系统中使用该设备的成本效益比。结果表明,对于健康对照者来说,能更好地代表步态不对称的传感器是大脚趾和中脚的传感器,而中风幸存者的前脚和中脚的传感器。结果还表明,脚的所有四个区域(脚趾,前脚,中足和脚后跟)在中风幸存者的足底压力模式重建中起着重要作用,而脚后跟和前脚的区域对于健康对照者更为突出。

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