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A new real-time resource-efficient algorithm for ECG denoising, feature extraction and classification-based wearable sensor network

机译:一种新的实时资源高效的基于ECG降噪,特征提取和分类的可穿戴传感器网络算法

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摘要

Long-term patient monitoring is an important issue especially for the elderly. This can be done using a wearable wireless sensor network. These sensors have limited resources in terms of computation, storage memory, size and mainly in power. In this work, a real-time resource-efficient algorithm has been implemented and tested practically such that not all the Electrocardiography (ECG) data are transmitted to the server for later processing. The algorithm reads a sample window and processes it on the sensor node using an adaptive filter with a differentiator and then a fast and simple algorithm for feature extraction of the ECG signal to find P, Q, R, S and T waves. Finally, a classifier algorithm has been designed to distinguish between normal and abnormal ECG signals. The work has been implemented using Shimmer sensor nodes and uses the open source TinyOS 2.1.2 and Python 2.7.
机译:长期的患者监护是一个重要问题,特别是对于老年人。这可以使用可穿戴的无线传感器网络来完成。这些传感器在计算,存储内存,大小以及主要功率方面的资源有限。在这项工作中,已经实施并实际测试了一种实时资源有效算法,因此并非所有心电图(ECG)数据都被传输到服务器以供以后处理。该算法读取样本窗口,并使用带有微分器的自适应滤波器在传感器节点上对其进行处理,然后使用快速简单的算法提取ECG信号的特征,以找到P,Q,R,S和T波。最终,设计了一种分类器算法来区分正常和异常ECG信号。这项工作已使用Shimmer传感器节点实现,并使用了开源TinyOS 2.1.2和Python 2.7。

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