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Energy-Efficient Serialized Walsh-Hadamard Transform Based Feature-Extraction for Information-Aware Compressive Sensing

机译:基于高效节能的串行Walsh-Hadamard变换的特征提取,用于信息感知压缩感知

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摘要

The performance of traditional compressive sensing (CS) architectures has been tempered by dynamically changing real-world data. This paper demonstrates an information-aware compressive sensing (CS) architecture for dynamic artifact detection of biophysiological signals in wearable applications. Artifacts such as long pause, baseline wandering, and saturation often corrupt recorded data due to environmental factors. In wearable applications where power conservation and ultra-low power operation are paramount, this can lead to wasted power. By combining earlier proposed CS based architectures with an efficient analog feature-extraction (FE) and digital decision making, the sampling rate of the ADC and the integration window of the multiplying DAC can be reduced in presence of artifacts to save power. As shown, this technique can reduce the system power consumption by up to 70% in the more extreme cases of signal corruption. A serialized Walsh-Hadamard Transform (WHT) used for FE is proposed that dramatically simplifies the circuit implementation while the digital classifier comprising of quadratic Support Vector Machine (SVM) classifier ensures low power operation with accurate decision outcomes.
机译:通过动态更改现实世界的数据来改善传统压缩感测(CS)架构的性能。本文演示了一种可感知信息的压缩感知(CS)架构,用于可穿戴应用中生物生理信号的动态伪像检测。由于环境因素,诸如长时间停顿,基线徘徊和饱和之类的伪影通常会破坏记录的数据。在节电和超低功耗操作至关重要的可穿戴应用中,这可能会导致功率浪费。通过将较早提出的基于CS的架构与有效的模拟特征提取(FE)和数字决策相结合,可以在存在伪像的情况下降低ADC的采样率和乘法DAC的积分窗口,以节省功耗。如图所示,这种技术可以在更极端的信号损坏情况下将系统功耗降低多达70%。提出了一种用于FE的串行Walsh-Hadamard变换(WHT),可大大简化电路实现,同时由二次支持向量机(SVM)分类器组成的数字分类器可确保低功耗操作并具有准确的决策结果。

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