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首页> 外文期刊>Journal of signal processing systems for signal, image, and video technology >Low-energy Formulations of Support Vector Machine Kernel Functions for Biomedical Sensor Applications
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Low-energy Formulations of Support Vector Machine Kernel Functions for Biomedical Sensor Applications

机译:用于生物医学传感器应用的支持向量机内核函数的低能公式

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Although physiologically-indicative signals can be acquired in low-power biomedical sensors, their accurate analysis imposes several challenges. Data-driven techniques, based on supervised machine-learning methods provide powerful capabilities for potentially overcoming these, but the computational energy is typically too severe for low-power devices. We present a formulation for the kernel function of a support-vector machine classifier that can substantially reduce the real-time computations involved. The formulation applies to kernel functions employing polynomial transformations. Using two representative biomedical applications (EEG-based seizure detection and ECG-based arrhythmia detection) employing clinical patient data, we show that the polynomial transformation yields accuracy performance comparable to the most powerful available transformation (i.e., the radial-basis function), and the proposed formulation reduces the energy by over 2500× in the arrhythmia detector and 9.3-198× in the seizure detector (depending on the patient).
机译:尽管可以在低功率生物医学传感器中获取生理指示信号,但其精确分析却带来了一些挑战。基于监督式机器学习方法的数据驱动技术提供了强大的功能,有可能克服这些问题,但是对于低功耗设备而言,计算能力通常过于苛刻。我们提出了一种支持向量机分类器的内核功能的公式,该公式可以大大减少所涉及的实时计算。该公式适用于采用多项式变换的核函数。使用两个使用临床患者数据的代表性生物医学应用程序(基于EEG的癫痫发作检测和基于ECG的心律失常检测),我们表明多项式变换产生的精度性能可与最强大的可用变换(即径向基函数)相媲美,并且所提出的配方在心律不齐检测器中将能量降低2500倍以上,在癫痫发作检测器中将能量降低9.3-198倍(取决于患者)。

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