心电信号快速去噪自编码器神经网络的VLSI结构设计

IF 5.2 1区 工程技术 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Shin-Chi Lai;Szu-Ting Wang;S. M. Salahuddin Morsalin;Jia-He Lin;Shih-Chang Hsia;Chuan-Yu Chang;Ming-Hwa Sheu
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引用次数: 0

摘要

心电图(ECG)检测并记录心脏相关的电活动。心电图测试识别并记录心脏相关的电活动。心电信号在心血管疾病护理中作为术前评估的重要组成部分越来越多。由于心电信号中存在大量的噪声,需要对其进行降噪,使其波形清晰。我们引入了紧凑快捷去噪自编码器(CS-DAE)神经网络来降低心电信号中的噪声。紧凑快捷方式压缩了通过快捷层传递的功能,从而降低了操作对内存的需求,并提高了降噪效果。此外,编码器和解码器对pixel - unshuffed和pixel - shuffed进行处理,有效地减轻了下采样和上采样操作带来的特征损失。因此,CS-DAE算法在保持较高精度的同时减少了计算量和所需的内存大小。我们使用MITDB和NSTDB数据集对提出的CS-DAE模型进行了训练和测试,结果表明,平均均方根差(PRD)的百分比为46.30%,信噪比(SNRimp)的改进为10.50。此外,我们还为所提出的CS-DAE神经网络设计了VLSI架构架构,以降低硬件成本和减少计算量。TUL PYNQTM-Z2开发平台运行Verilog代码,该代码用于VLSI架构,功耗最低,为1.65W。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
VLSI Architecture Design for Compact Shortcut Denoising Autoencoder Neural Network of ECG Signal
The Electrocardiogram (ECG) test detects and records cardiac-related electrical activity of the heart. The ECG test identifies and documents cardiac-related electrical activity in the heart. The use of ECG signals for cardiovascular disease nursing as a crucial component of preoperative evaluation is increasing. ECG signals need to denoise and display in a clear waveform due to the numerous noises. We have introduced Compact Shortcut Denoising Auto-encoder (CS-DAE) neural network, which reduces the noise from ECG signals. The Compact Shortcut approach compresses the features passed through the shortcut layers, which lowers the operation’s memory needs and improves the noise reduction impact. In addition, the encoder and decoder process the Pixel-Unshuffled and Pixel-Shuffled, which effectively mitigates the feature loss caused by down-sampling and up-sampling operations. As a result, the CS-DAE algorithm decreases the computation and required memory size while maintaining higher accuracy. We have used MITDB and NSTDB datasets for training and testing the proposed CS-DAE model, resulting in the average Percentage of Root Mean Square Difference (PRD) being 46.30% and the improvement of Signal-to-Noise Ratio (SNRimp) being 10.50. In addition, we have designed VLSI architect ure for the proposed CS-DAE neural network to accelerate low hardware cost and less computation. The TUL PYNQTM-Z2 development platform runs the Verilog code, which is used for VLSI architecture and has the lowest power consumption of 1.65W.
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来源期刊
IEEE Transactions on Circuits and Systems I: Regular Papers
IEEE Transactions on Circuits and Systems I: Regular Papers 工程技术-工程:电子与电气
CiteScore
9.80
自引率
11.80%
发文量
441
审稿时长
2 months
期刊介绍: TCAS I publishes regular papers in the field specified by the theory, analysis, design, and practical implementations of circuits, and the application of circuit techniques to systems and to signal processing. Included is the whole spectrum from basic scientific theory to industrial applications. The field of interest covered includes: - Circuits: Analog, Digital and Mixed Signal Circuits and Systems - Nonlinear Circuits and Systems, Integrated Sensors, MEMS and Systems on Chip, Nanoscale Circuits and Systems, Optoelectronic - Circuits and Systems, Power Electronics and Systems - Software for Analog-and-Logic Circuits and Systems - Control aspects of Circuits and Systems.
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