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首页> 外文期刊>Journal of medical systems >Performance Evaluation and Implementation of FPGA Based SGSF in Smart Diagnostic Applications
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Performance Evaluation and Implementation of FPGA Based SGSF in Smart Diagnostic Applications

机译:智能诊断应用中基于FPGA的SGSF性能评估和实现

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The main objective of the paper is to implement Savitzky Golay Smoothing Filter (SGSF) so as to apply in pre-processing of real time smart medical diagnostic systems. As very important information of EEG and ECG waveforms lies in the peak of the signal, hence it becomes absolutely necessary to filter noise and artifacts from the signal. The implemented filter should be able to reject the noise efficiently along with the least distortion from the original signal. The shape preserving characteristics of the filter are determined by introducing different noise levels in the signal. The designed filter is tested on synthetic signals of EEG and ECG by adding different types of noise and the performance is analysed on various parameters, i.e., SNR, SSNR, SNRI, MSE, COR and signal distortion of the final output. The smoothing performance comparison of SGSF with the most commonly used Moving Average Filter (MAF) proves that SGSF is more efficient. Hence it is suggested that MAF can be replaced by SGSF. For real time issues, it is further implemented on reconfigurable architectures so as to achieve high speed, low cost, low power consumption and less area. Therefore SGSF is realized on FPGA platform to combine the advantages of both. Real time EEG and ECG signals are also considered for experimentation. The experimental results show that the proposed methodology (FPGA-SGSF) significantly reduces the processing time and preserves the actual features of the signal.
机译:本文的主要目的是实现Savitzky Golay平滑滤波器(SGSF),以应用于实时智能医疗诊断系统的预处理。由于EEG和ECG波形的非常重要的信息位于信号的峰值中,因此绝对有必要从信号中滤除噪声和伪像。所实现的滤波器应该能够有效地抑制噪声,同时使原始信号的失真最小。通过在信号中引入不同的噪声电平来确定滤波器的形状保持特性。通过添加不同类型的噪声,对设计的滤波器在EEG和ECG的合成信号上进行测试,并在各种参数(即SNR,SSNR,SNRI,MSE,COR和最终输出的信号失真)上分析性能。 SGSF与最常用的移动平均滤波器(MAF)的平滑性能比较证明SGSF效率更高。因此,建议可以用SGSF代替MAF。对于实时问题,它在可重新配置的体系结构上进一步实现,以实现高速,低成本,低功耗和较小的面积。因此,SGSF是在FPGA平台上实现的,将两者的优点结合在一起。实时脑电图和心电图信号也考虑用于实验。实验结果表明,所提出的方法(FPGA-SGSF)大大减少了处理时间并保留了信号的实际特征。

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