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A Compressed Sensing-Based Wearable Sensor Network for Quantitative Assessment of Stroke Patients

机译:基于压缩感知的可穿戴传感器网络对中风患者的定量评估

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摘要

Clinical rehabilitation assessment is an important part of the therapy process because it is the premise for prescribing suitable rehabilitation interventions. However, the commonly used assessment scales have the following two drawbacks: (1) they are susceptible to subjective factors; (2) they only have several rating levels and are influenced by a ceiling effect, making it impossible to exactly detect any further improvement in the movement. Meanwhile, energy constraints are a primary design consideration in wearable sensor network systems since they are often battery-operated. Traditionally, for wearable sensor network systems that follow the Shannon/Nyquist sampling theorem, there are many data that need to be sampled and transmitted. This paper proposes a novel wearable sensor network system to monitor and quantitatively assess the upper limb motion function, based on compressed sensing technology. With the sparse representation model, less data is transmitted to the computer than with traditional systems. The experimental results show that the accelerometer signals of Bobath handshake and shoulder touch exercises can be compressed, and the length of the compressed signal is less than 1/3 of the raw signal length. More importantly, the reconstruction errors have no influence on the predictive accuracy of the Brunnstrom stage classification model. It also indicated that the proposed system can not only reduce the amount of data during the sampling and transmission processes, but also, the reconstructed accelerometer signals can be used for quantitative assessment without any loss of useful information.
机译:临床康复评估是治疗过程的重要组成部分,因为这是开出适当康复干预措施的前提。但是,常用的评估量表具有以下两个缺点:(1)容易受到主观因素的影响; (2)它们只有几个等级,并且受上限效应的影响,因此无法准确检测出运动的任何进一步改善。同时,能量约束是可穿戴传感器网络系统中的主要设计考虑因素,因为它们通常由电池供电。传统上,对于遵循Shannon / Nyquist采样定理的可穿戴传感器网络系统,有许多数据需要采样和传输。本文提出了一种基于压缩传感技术的新型可穿戴传感器网络系统,用于监测和定量评估上肢运动功能。使用稀疏表示模型,与传统系统相比,传输到计算机的数据更少。实验结果表明,Bobath握手和肩膀触摸运动的加速度计信号可以被压缩,压缩后的信号长度小于原始信号长度的1/3。更重要的是,重建误差对Brunnstrom阶段分类模型的预测准确性没有影响。还表明,提出的系统不仅可以减少采样和传输过程中的数据量,而且重构的加速度计信号可以用于定量评估,而不会丢失有用的信息。

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