IEEE J Biomed Health Inform. 2018 Sep;22(5):1456-1465. doi: 10.1109/JBHI.2017.2773097. Epub 2017 Nov 13.
In this paper, a speed and power-efficient set partitioning in hierarchical trees (SPIHT) design is introduced for one-dimensional (1-D) wavelet-based electrocardiography (ECG) compression systems with quality guarantee. To achieve real-time and low-power design objectives toward wearable quality-on-demand (QoD) ECG applications, we first propose a coding-time- and computation-efficient SPIHT algorithm using various types of coding status register files to overcome the disadvantages of low coding speeds and complicated hardware architectures characterizing prior SPIHT algorithms resulting from the necessity of dynamic computation and arrangement in the sorting and refinement processing phase. Second, a highly pipelined and power-efficient very large scale integration (VLSI) architecture is developed to implement a high-performance and low-power SPIHT design based on the proposed algorithm. The final simulation results demonstrate that our proposed algorithm can speed up the average coding time 1.52 to 2.74 times compared to prior work with an identical compression ratio for an 11-level $1024\times 1,1-{\rm{D}}$ discrete wavelet transform at diverse target percentage root-mean-square differences (PRDT) on various MIT-BIH arrhythmia datasets. Applied to wearable wavelet-based QoD ECG applications, our proposed VLSI architecture attains a working frequency of 740 MHz and consumes an average of $\text{23}\ \mu {\text{W}}$ of power with Taiwan Semiconductor Manufacturing Company 90-nm CMOS technology, which shows the effectiveness of speed and power over the state-of-the-art designs.
本文提出了一种速度和功率高效的分层树集分割(SPIHT)设计,用于具有质量保证的一维(1-D)基于小波的心电图(ECG)压缩系统。为了实现面向可穿戴按需质量(QoD)ECG 应用的实时和低功耗设计目标,我们首先提出了一种编码时间和计算效率高的 SPIHT 算法,使用各种类型的编码状态寄存器文件来克服先前 SPIHT 算法的低编码速度和复杂硬件架构的缺点,这些算法由于排序和细化处理阶段的动态计算和安排的必要性而具有这些缺点。其次,开发了一种高度流水线化和功率高效的超大规模集成(VLSI)架构,以根据所提出的算法实现高性能和低功率 SPIHT 设计。最终的仿真结果表明,与具有相同压缩比的先前工作相比,我们提出的算法可以将平均编码时间加快 1.52 到 2.74 倍,对于各种 MIT-BIH 心律失常数据集上的不同目标均方根差异百分比(PRDT),在 11 级$1024\times11-D$离散小波变换下。应用于可穿戴基于小波的 QoD ECG 应用,我们提出的 VLSI 架构实现了 740 MHz 的工作频率,平均消耗 23μW 的功率,采用台湾积体电路制造公司 90nm CMOS 技术,这表明在速度和功率方面优于现有设计。