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Performance evaluation of popular l1-minimization algorithms in the context of Compressed Sensing

机译:压缩感知环境下流行的l1最小化算法的性能评估

摘要

Compressed sensing (CS) is a data acquisition technique that is gaining popularity because of the fact that the reconstruction of the original signal is possible even if it was sampled at a sub-Nyquist rate. In contrast to the traditional sampling method, in CS we take a few measurements from the signal and the original signal can then be reconstructed from these measurements by using an optimization technique called l1-minimization. Computer engineers and mathematician have been equally fascinated by this latest trend in digital signal processing. In this work we perform an evaluation of different l1-minimization algorithms for their performance in reconstructing the signal in the context of CS. The algorithms that have been evaluated are PALM (Primal Augmented Lagrangian Multiplier method), DALM (Dual Augmented Lagrangian Multiplier method) and ISTA (Iterative Soft Thresholding Algorithm). The evaluation is done based on three parameters which are execution time, PSNR and RMSE.
机译:压缩感测(CS)是一种数据采集技术,由于即使以亚奈奎斯特速率采样原始信号,也可以重建原始信号,因此越来越受欢迎。与传统的采样方法相比,在CS中,我们从信号中进行了一些测量,然后可以使用称为l1最小化的优化技术从这些测量中重建原始信号。计算机工程师和数学家同样对数字信号处理的最新趋势着迷。在这项工作中,我们对不同的l1-最小化算法在CS上下文中重构信号的性能进行了评估。已评估的算法是PALM(原始增强拉格朗日乘数法),DALM(双增强拉格朗日乘数法)和ISTA(迭代软阈值算法)。评估是基于三个参数完成的,即执行时间,PSNR和RMSE。

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    TV Bijeesh;

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