An analog hardware solution for compressive sensing reconstruction using gradient-based method

被引:0
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作者
Irena Orović
Nedjeljko Lekić
Marko Beko
Srdjan Stanković
机构
[1] University of Montenegro,Faculty of Electrical Engineering
[2] COPELABS,undefined
[3] Universidade Lusófona de Humanidades e Tecnologias,undefined
关键词
Analog hardware; Compressive sensing; Gradient reconstruction method; Signal reconstruction;
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摘要
This work proposes an analog implementation of gradient-based algorithm for compressive sensing signal reconstruction. Compressive sensing has appeared as a promising technique for efficient acquisition and reconstruction of sparse signals in many real-world applications. It starts from the assumption that sparse signals can be exactly reconstructed using far less samples than in standard signal processing. In this paper, we consider the gradient-based algorithm as the optimal choice that provides lower complexity and competitive accuracy compared with existing methods. Since the efficient hardware implementations of reconstruction algorithms are still an emerging topic, this work is focused on the design of hardware that will provide fast parallel algorithm execution for real-time applications, overcoming the limitations imposed by the large number of nested iterations during the signal reconstruction. The proposed implementation is simple and fast, executing 400 iterations in 1 ms which is sufficient to obtain highly accurate reconstruction results.
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