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Bayesian compressive sensing for approximately sparse signals and application to structural health monitoring signals for data loss recovery

机译:用于近似稀疏信号的贝叶斯压缩传感,并应用于结构健康监测信号以恢复数据

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The theory and application of compressive sensing (CS) have received a lot of interest in recent years. The basic idea in CS is to use a specially-designed sensor to sample signals that are sparse in some basis (e.g. wavelet basis) directly in a compressed form, and then to reconstruct (decompress) these signals accurately using some inversion algorithm after transmission to a central processing unit. However, many signals in reality are only approximately sparse, where only a relatively small number of the signal coefficients in some basis are significant and the remaining basis coefficients are relatively small but they are not all zero. In this case, perfect reconstruction from compressed measurements is not expected. In this paper, a Bayesian CS algorithm is proposed for the first time to reconstruct approximately sparse signals. A robust treatment of the uncertain parameters is explored, including integration over the prediction-error precision parameter to remove it as a "nuisance" parameter, and introduction of a successive relaxation procedure for the required optimization of the basis coefficient hyper-parameters. The performance of the algorithm is investigated using compressed data from synthetic signals and real signals from structural health monitoring systems installed on a space-frame structure and on a cable stayed bridge. Compared with other state-of-the-art CS methods, including our previously-published Bayesian method, the new CS algorithm shows superior performance in reconstruction robustness and posterior uncertainty quantification, for approximately sparse signals. Furthermore, our method can be utilized for recovery of lost data during wireless transmission, even if the level of sparseness in the signal is low. (C) 2016 Elsevier Ltd. All rights reserved.
机译:近年来,压感(CS)的理论和应用受到了广泛的关注。 CS中的基本思想是使用专门设计的传感器以压缩形式直接采样在某些基础(例如小波基础)上稀疏的信号,然后在传输到以下位置后使用某种反演算法准确地重建(解压缩)这些信号。中央处理单元。但是,实际上,许多信号仅是稀疏的,在某些情况下,只有相对少量的信号系数才有意义,而其余的基础系数则相对较小,但并非全为零。在这种情况下,不能期望从压缩测量中获得完美的重建。在本文中,首次提出了贝叶斯CS算法来重构近似稀疏信号。探索了对不确定参数的鲁棒处理,包括对预测误差精度参数进行积分以将其删除为“讨厌”参数,以及引入连续松弛过程以优化所需的基本系数超参数。使用来自合成信号的压缩数据和来自安装在空间框架结构和斜拉桥上的结构健康监测系统的真实信号,研究了算法的性能。与其他最新的CS方法(包括我们先前发布的贝叶斯方法)相比,对于近似稀疏的信号,新的CS算法在重建鲁棒性和后不确定性量化方面显示出优异的性能。此外,即使信号中的稀疏程度很低,我们的方法也可用于恢复无线传输期间丢失的数据。 (C)2016 Elsevier Ltd.保留所有权利。

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