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Accelerated sparsity based reconstruction of compressively sensed multichannel EEG signals

机译:基于加速的基于稀疏的伤口性的多通道EEG信号的重建

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Wearable electronics capable of recording and transmitting biosignals can provide convenient and pervasive health monitoring. A typical EEG recording produces large amount of data. Conventional compression methods cannot compress date below Nyquist rate, thus resulting in large amount of data even after compression. This needs large storage and hence long transmission time. Compressed sensing has proposed solution to this problem and given a way to compress data below Nyquist rate. In this paper, double temporal sparsity based reconstruction algorithm has been applied for the recovery of compressively sampled EEG data. The results are further improved by modifying the double temporal sparsity based reconstruction algorithm using schattern-p norm along with decorrelation transformation of EEG data before processing. The proposed modified double temporal sparsity based reconstruction algorithm out-perform block sparse bayesian learning and Rackness based compressed sensing algorithms in terms of SNDR and NMSE. Simulation results further show that the proposed algorithm has better convergence rate and less execution time.
机译:可穿戴电子能够记录和传输生物功能可提供方便和普遍的健康监测。典型的EEG录制产生大量数据。传统的压缩方法不能压缩以下奈奎斯特率以下,因此即使在压缩之后也导致大量数据。这需要大存储,因此长传输时间。压缩传感已经提出了解决这个问题的解决方案,并给出了一种方法来压缩低于奈奎斯特率的数据。本文综述了基于双颞稀疏的重建算法已应用于恢复压缩采样的EEG数据。通过使用Schattern-P规范修改双颞稀疏基于重构的重建算法以及处理前的eEG数据的去相关性转换,进一步提高了结果。基于SNDR和NMSE方面的建议改进的双颞稀烂基于基于块的重建算法Out-Pusting块稀疏贝叶斯学习和机架的压缩感测算法。仿真结果进一步表明,所提出的算法具有更好的收敛速度和更少的执行时间。

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