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Hardware/Software Co-Design of Fractal Features Based Fall Detection System

机译:基于分形特征的跌倒检测系统软硬件协同设计

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摘要

Falls are a leading cause of death in older adults and result in high levels of mortality, morbidity and immobility. Fall Detection Systems (FDS) are imperative for timely medical aid and have been known to reduce death rate by 80%. We propose a novel wearable sensor FDS which exploits fractal dynamics of fall accelerometer signals. Fractal dynamics can be used as an irregularity measure of signals and our work shows that it is a key discriminant for classification of falls from other activities of life. We design, implement and evaluate a hardware feature accelerator for computation of fractal features through multi-level wavelet transform on a reconfigurable embedded System on Chip, Zynq device for evaluating wearable accelerometer sensors. The proposed FDS utilises a hardware/software co-design approach with hardware accelerator for fractal features and software implementation of Linear Discriminant Analysis on an embedded ARM core for high accuracy and energy efficiency. The proposed system achieves 99.38% fall detection accuracy, 7.3× speed-up and 6.53× improvements in power consumption, compared to the software only execution with an overall performance per Watt advantage of 47.6×, while consuming low reconfigurable resources at 28.67%.
机译:跌倒是老年人死亡的主要原因,并导致高水平的死亡率,发病率和行动不便。跌倒检测系统(FDS)对于及时的医疗救助至关重要,并且已知可以将死亡率降低80%。我们提出了一种新颖的可穿戴式传感器FDS,该传感器利用了坠落加速度计信号的分形动力学。分形动力学可以用作信号的不规则度量,我们的工作表明,它是区分生命中其他活动的跌倒的关键判别方法。我们通过在可重配置嵌入式系统级芯片Zynq器件上通过多级小波变换设计,实现和评估用于分形特征计算的硬件特征加速器,以评估可穿戴式加速度计传感器。拟议的FDS利用硬件/软件协同设计方法与硬件加速器来实现分形特征,并在嵌入式ARM内核上实现线性判别分析的软件实现,以实现高精度和高能效。与仅执行软件时相比,所提出的系统具有99.38%的跌落检测精度,7.3倍的加速和6.53倍的功耗降低,而每瓦的整体性能为47.6倍,同时消耗了28.67%的低可重新配置资源。

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