灵活模拟-特征转换器的特征选择算法

Antoine Back, Paul Chollet, Olivier Fercoq, P. Desgreys
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引用次数: 2

摘要

无线传感器领域面临的主要挑战之一是如何延长电池寿命。模拟-特征(A2F)转换是一种针对物联网设备的采集方法,通过在模拟域中提取相关特征,然后在数字域中执行分类步骤,以亚奈奎斯特速率执行分类任务。目前的A2F解决方案都是针对特定的应用而设计的,本文提出了一种设计通用A2F转换器的方法,该转换器可用于多种信号类型。为了提取用于分类任务的信息,我们提出使用非均匀小波采样,其缺点是会带来冗余和不相关信息。为了达到降低功耗的目标,我们需要提取一小部分相关特征进行分类。为了实现这一点,测试了几种特征选择算法用于心电图(ECG)异常检测。结果表明,在提取不到10个特征的情况下,心电异常的检出率可达98%。
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Feature selection algorithms for flexible analog-to-feature converter
One of the main challenges in the field of wireless sensors is to increase their battery life. Analog-to-feature (A2F) conversion is an acquisition method thought for IoT devices, that perform classification tasks at sub-Nyquist rate, by extracting relevant features in the analog domain and then performing the classification step in the digital domain. Current A2F solutions are designed for a specific application, this paper proposes a method to design a generic A2F converter usable for several signal types. In order to extract information for classification task, we propose to use non uniform wavelet sampling, its drawback is that it brings redundancy and irrelevant information. To reach our goal of decreasing power consumption, we need to extract a small set of relevant features for classification. To achieve this, several features selection algorithms are tested for electrocardiogram (ECG) anomalies detection. We demonstrate that the detection rate of ECG anomalies can reach 98% with less than 10 features extracted.
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