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Sampling modulation: An energy efficient novel feature extraction for biosignal processing

机译:采样调制:用于生物信号处理的高效节能的新颖特征提取

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Extracting useful information from human bio potentials is an essential component of many wearable health applications. Yet the feature extraction itself can be computationally demanding, and may rapidly exhaust the meager energy supply available to the sensor node. General-purpose time-frequency analysis techniques, such as the Discrete Wavelet Transform (DWT) are widely used, but are computationally demanding and may represent overkill. This work presents a feature extraction technique for biopotential time-frequency analysis, based on the modulation of finite sample differences. The technique is applied to EEG-based seizure detection (feeding a Support Vector Machine (SVM) classifier) and reaches the performance of a DWT implementation, while offering a gain of 5× in power efficiency and 41× in execution.
机译:从人生物潜力中提取有用信息是许多可穿戴健康应用的重要组成部分。然而,特征提取本身可以计算得要求,并且可以快速排出传感器节点可用于可用的微薄能量供应。广泛使用的通用时间频率分析技术,例如离散小波变换(DWT),但是计算得出要求,并且可以代表跨度。该工作提出了一种特征提取技术,用于基于有限样本差异的调制来进行生物电能时频分析。该技术应用于基于EEG的癫痫发作检测(馈送支持向量机(SVM)分类器)并达到DWT实现的性能,同时在功率效率下提供5倍的增益和41×执行。

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