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An Energy Efficient Compressed Sensing Framework for the Compression of Electroencephalogram Signals

机译:压缩脑电图信号的节能压缩感知框架

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The use of wireless body sensor networks is gaining popularity in monitoring and communicating information about a person's health. In such applications, the amount of data transmitted by the sensor node should be minimized. This is because the energy available in these battery powered sensors is limited. In this paper, we study the wireless transmission of electroencephalogram (EEG) signals. We propose the use of a compressed sensing (CS) framework to efficiently compress these signals at the sensor node. Our framework exploits both the temporal correlation within EEG signals and the spatial correlations amongst the EEG channels. We show that our framework is up to eight times more energy efficient than the typical wavelet compression method in terms of compression and encoding computations and wireless transmission. We also show that for a fixed compression ratio, our method achieves a better reconstruction quality than the CS-based state-of-the art method. We finally demonstrate that our method is robust to measurement noise and to packet loss and that it is applicable to a wide range of EEG signal types.
机译:无线人体传感器网络的使用在监视和传达有关人的健康的信息方面越来越受欢迎。在此类应用中,应将传感器节点发送的数据量减至最少。这是因为这些电池供电的传感器中可用的能量有限。在本文中,我们研究了脑电图(EEG)信号的无线传输。我们建议使用压缩传感(CS)框架在传感器节点上有效压缩这些信号。我们的框架利用EEG信号内的时间相关性和EEG通道之间的空间相关性。我们证明,在压缩和编码计算以及无线传输方面,我们的框架比典型的小波压缩方法的能源效率高出八倍。我们还表明,对于固定的压缩率,我们的方法比基于CS的最新方法具有更好的重建质量。最后,我们证明了我们的方法对测量噪声和丢包具有鲁棒性,并且适用于各种EEG信号类型。

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