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Assessment of seven reconstruction methods for contemporary compressive sensing

机译:评估当代压缩传感的七种重建方法

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In order to acquire signal data without any loss, according to Nyquist rate theorem, the sampling rate must be equal to or more than twice the bandwidth. However, this will result in occupying more memory space and consume more active power at higher sampling rates, which are not suitable for Internet of Things (IoT) applications that have stringent memory and power constraints. Compressive Sensing or Sampling (CS) is a compressing technique that can be used to capture the data at significantly lower rate. This paper presents the simulation results of many contemporary research work on CS for ECG signals. Two CS methods have been studied: pre-processing then compression and under-sampling. Additionally, seven common reconstruction algorithms have been addressed. The simulation results of these CS reconstruction techniques are presented in addition to many metrics that were used to evaluate the performance and quality of reconstruction.
机译:为了根据奈奎斯特率定理获取信号数据而没有任何损失,采样率必须等于或多于带宽的两倍。但是,这将导致占据更多的内存空间并以更高的采样率消耗更高的功率,这不适合具有严格内存和功率约束的物联网(IoT)应用程序。压缩感测或采样(CS)是一种压缩技术,可用于以显着较低的速率捕获数据。本文介绍了对ECG信号CS的许多当代研究工作的仿真结果。已经研究了两种CS方法:预处理然后压缩和欠抽样。此外,已经解决了七种常见的重建算法。除了用于评估性能和重建质量的许多指标之外,还提出了这些CS重建技术的仿真结果。

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