IEEE Trans Biomed Circuits Syst. 2017 Dec;11(6):1278-1289. doi: 10.1109/TBCAS.2017.2740059. Epub 2017 Sep 13.
In recent years, compressed sensing (CS) has proved to be effective in lowering the power consumption of sensing nodes in biomedical signal processing devices. This is due to the fact the CS is capable of reducing the amount of data to be transmitted to ensure correct reconstruction of the acquired waveforms. Rakeness-based CS has been introduced to further reduce the amount of transmitted data by exploiting the uneven distribution to the sensed signal energy. Yet, so far no thorough analysis exists on the impact of its adoption on CS decoder performance. The latter point is of great importance, since body-area sensor network architectures may include intermediate gateway nodes that receive and reconstruct signals to provide local services before relaying data to a remote server. In this paper, we fill this gap by showing that rakeness-based design also improves reconstruction performance. We quantify these findings in the case of ECG signals and when a variety of reconstruction algorithms are used either in a low-power microcontroller or a heterogeneous mobile computing platform.
近年来,压缩感知(CS)已被证明可有效降低生物医学信号处理设备中传感节点的功耗。这是因为 CS 能够减少要传输的数据量,以确保正确重建所获取的波形。基于稀疏度的 CS 通过利用所感知信号能量的不均匀分布,进一步减少了传输的数据量。然而,到目前为止,关于其采用对 CS 解码器性能的影响,还没有进行全面的分析。后一点非常重要,因为体域网传感器网络架构可能包括中间网关节点,这些节点接收和重构信号,以便在将数据中继到远程服务器之前提供本地服务。在本文中,我们通过证明基于稀疏度的设计也可以提高重建性能来填补这一空白。我们在 ECG 信号的情况下以及在低功耗微控制器或异构移动计算平台中使用各种重建算法的情况下量化了这些发现。