A Universal Sparse Signal Reconstruction Algorithm via Backtracking and Belief Propagation

Fang Jiang, Yanjun Hu, Caiqing She
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引用次数: 1

Abstract

The belief propagation (BP) algorithm under the Bayesian framework can accelerate Compressed Sensing (CS) encoding and decoding by using the sparse encoder matrix. To improve the reconstruction performance we consider a backtracking-based belief propagation algorithm (CS-BBP) for the sparse signal reconstruction. The backtracking is added after performing BP and minimum mean square error (MMSE) estimate in every iteration. Simulation results show that the CS-BBP is a universal reconstruction algorithm which has a good performance for both 1-D Gaussian and 2-D image signal reconstructions.
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基于回溯和信念传播的通用稀疏信号重构算法
贝叶斯框架下的信念传播(BP)算法可以利用稀疏编码器矩阵加速压缩感知(CS)编解码。为了提高稀疏信号的重构性能,我们提出了一种基于回溯的信念传播算法(CS-BBP)。在每次迭代中进行BP和最小均方误差(MMSE)估计后加入回溯。仿真结果表明,CS-BBP是一种通用重构算法,对一维高斯图像信号和二维图像信号的重构都有良好的性能。
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