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首页> 外文期刊>SIAM Journal on Scientific Computing >Simultaneously Sparse Solutions to Linear Inverse Problems with Multiple System Matrices and a Single Observation Vector
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Simultaneously Sparse Solutions to Linear Inverse Problems with Multiple System Matrices and a Single Observation Vector

机译:具有多个系统矩阵和单个观测向量的线性逆问题的同时稀疏解

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摘要

A problem that arises in slice-selective magnetic resonance imaging (MRI) radiofrequency (RF) excitation pulse design is abstracted as a novel linear inverse problem with a simultaneous sparsity constraint. Multiple unknown signal vectors are to be determined, where each passes through a different system matrix and the results are added to yield a single observation vector. Given the matrices and lone observation, the objective is to find a simultaneously sparse set of unknown vectors that approximately solves the system. We refer to this as the multiple-system single-output (MSSO) simultaneous sparse approximation problem. This manuscript contrasts the MSSO problem with other simultaneous sparsity problems and conducts an initial exploration of algorithms with which to solve it. Greedy algorithms and techniques based on convex relaxation are derived and compared empirically. Experiments involve sparsity pattern recovery in noiseless and noisy settings and MRI RF pulse design.
机译:切片选择性磁共振成像(MRI)射频(RF)激发脉冲设计中出现的问题被抽象为具有稀疏约束的新型线性逆问题。将确定多个未知信号向量,其中每个信号向量都通过不同的系统矩阵,并且将结果相加以生成单个观察向量。给定矩阵和单独的观测值,目标是找到同时稀疏的未知向量集,这些向量可以近似求解该系统。我们将此称为多系统单输出(MSSO)同时稀疏近似问题。该手稿将MSSO问题与其他同时发生的稀疏问题进行了对比,并对解决该问题的算法进行了初步探索。推导并比较了基于凸松弛的贪婪算法和技术。实验涉及在无噪声和嘈杂的环境中进行稀疏模式恢复以及MRI RF脉冲设计。

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