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Deep Network for Parametric Bilinear Generalized Approximate Message Passing and Its Application in Compressive Sensing under Matrix Uncertainty

机译:参数化双线性广义近似报文传递深度网络及其在矩阵不确定性下压缩感知中的应用

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摘要

Deep learning is playing an increasingly important role in signal processing field due to its excellent performance on many inference problems. Parametric bilinear generalized approximate message passing (P-BiG-AMP) is a new approximate message passing based approach to a general class of structure-matrix bilinear estimation problems. In this letter, we propose a novel feed-forward neural network architecture to realize P-BiG-AMP methodology with deep learning for the inference problem of compressive sensing under matrix uncertainty. Linear transforms utilized in the recovery process and parameters involved in the input and output channels of measurement are jointly learned from training data. Simulation results show that the trained P-BiG-AMP network can achieve higher reconstruction performance than the P-BiG-AMP algorithm with parameters tuned via the expectation-maximization method.
机译:深度学习在信号处理领域发挥着越来越重要的作用,因为它在许多推理问题上表现出色。参数化双线性广义近似消息传递(P-BiG-AMP)是一种新的基于近似消息传递的方法,用于解决一类一般结构矩阵双线性估计问题。在这篇文章中,我们提出了一种新的前馈神经网络架构,以实现具有深度学习的P-BiG-AMP方法,以解决矩阵不确定性下的压缩感知推理问题。恢复过程中使用的线性变换以及测量输入和输出通道中涉及的参数是从训练数据中共同学习的。仿真结果表明,经过训练的P-BiG-AMP网络在参数通过期望最大化方法进行调优后,能够实现比P-BiG-AMP算法更高的重构性能。

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