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Neural-network based classification of laser-Doppler flowmetry signals

机译:基于神经网络的激光多普勒流动速率信号分类

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Laser Doppler flowmetry is the most advantageous technique for non-invasive patient monitoring. Based on the Doppler principle, signals corresponding to blood flow are generated, and metrics corresponding to healthy vs. patient samples are extracted. A neural-network based classifier for these metrics is proposed. The signals are initially filtered and transformed into the frequency domain through third-order correlation and bispectrum estimation. The pictorial representation of the correlations is subsequently routed into a neural network based multilayer perceptron classifier, which is described in detail. Finally, experimental results demonstrating the efficiency of the proposed scheme are presented.
机译:激光多普勒流动性是非侵入性患者监测最有利的技术。基于多普勒原理,产生对应于血流的信号,提取对应于健康与患者样品的度量。提出了用于这些度量的神经网络的分类器。通过三阶相关性和BISPectrum估计,最初将信号滤波并转换为频域。随后将相关性的图形表示被路由到基于神经网络的多层的MultonePtron分类器中,这将详细描述。最后,提出了表现出拟议方案效率的实验结果。

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