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引用次数: 32
摘要
PPG信号利用基于光的方法来感知由心脏泵送动作控制的血流速率。它广泛应用于医疗保健领域,应用范围从重症监护病房的脉搏血氧仪到可穿戴设备的心率(HR)测量。本文介绍了一种将自动编码和特征选择相结合的组合生成算法PPGC-AE-FS (PPG-Signal Compression using Auto-Encoder and Feature Selection)。最后,我们引入的算法可以通过不相关的任务将任务区分为相关单元,从而得到非常有效的分类任务特征。我们的方法不仅在更高特征的学习层次上完成了自动识别,而且赋予了自动识别构造判别单元的能力。我们在许多基准上的实验结果表明,我们的模型比现有的方法要好得多。
Compression of PPG Signal Through Joint Technique of Auto-Encoder and Feature Selection
PPG signal utilize the light-based method to sense the blood-flow-rate as controlled by the actions of heart’s pumping. It is extensively utilized in the healthcare with application ranging from the pulse oximetry in the serious care units to the heart rate (HR) measurement in the wearable devices. This paper introduces the algorithm known as PPGC-AE-FS (PPG-Signal Compression using Auto-Encoder and Feature Selection) that is the combined generative method, which incorporates FS and AE together. At the end, our introduced algorithm can differentiate the task as relevant units through not relevant task to get very effective feature for the classification task. Our method not only accomplishes the FS on the learned level of higher feature, but also endows the AE to construct the discriminative units. Our experimental outcomes on many benchmarks that demonstrate our model is much better than existing methods.