首页> 外文会议>2011 IEEE International Symposium on Circuits and Systems >Simplified logic design methodology for fuzzy membership function based robust detection of maternal modulus maxima location: A low complexity Fetal ECG extraction architecture for mobile health monitoring systems
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Simplified logic design methodology for fuzzy membership function based robust detection of maternal modulus maxima location: A low complexity Fetal ECG extraction architecture for mobile health monitoring systems

机译:基于模糊隶属函数的简化逻辑设计方法,基于稳健的母模最大位置检测:一种用于移动健康监控系统的低复杂度胎儿ECG提取架构

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This paper proposes a simplified logic design methodology for the fuzzy membership function used for robust and reliable detection of modulus-maxima locations in wavelet domain for fetal ECG extraction from the abdominal composite ECG signal. This simplification is achieved by exploiting the inherent time-position information of the wavelet coefficients decomposed at different resolution levels. Subsequently, a low complexity VLSI architecture for Fetal ECG extraction is presented which is designed using the recently proposed memory-efficient, multiplierless Discrete Wavelet Transform method. The generic memory model within this architecture will provide the flexibility to configure the on-chip memory with any type of orthonormal wavelets suitable for different applications. Total synthesized cell area of the proposed architecture is 14.2mm2 and power consumption is 101.5µW at 1.2 V @ 1 MHz frequency using 0.13µm standard cell technology. The proposed architecture is targeted for the personalized health monitoring applications within a mobile home-care medical device in the resource constrained environment.
机译:本文提出了一种简化的逻辑设计方法,用于模糊隶属函数,用于从腹部复合ECG信号中获取小波域中的模数 - 最大值位置的鲁棒和可靠地检测。通过利用在不同分辨率级别分解的小波系数的固有时间位置信息来实现这种简化。随后,提出了一种用于胎儿ECG提取的低复杂性VLSI架构,其使用最近提出的记忆有效,多平面离散小波变换方法设计。该架构中的通用存储器模型将提供具有适合于不同应用的任何类型的正交小波配置片上存储器的灵活性。所提出的架构的总合成电池面积为14.2mm 2 ,功耗为101.5μw,使用0.13μm标准电池技术为1.2 v @ 1 MHz频率。该建议的架构是针对资源受限环境中移动家庭护理医疗设备中的个性化健康监测应用程序的目标。

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