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A* orthogonal matching pursuit: Best-first search for compressed sensing signal recovery

机译:A *正交匹配追求:最佳优先搜索压缩感测信号恢复

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摘要

Compressed sensing is a developing field aiming at the reconstruction of sparse signals acquired in reduced dimensions, which make the recovery process under-determined. The required solution is the one with minimum ?0 norm due to sparsity, however it is not practical to solve the ?0 minimization problem. Commonly used techniques include ?1 minimization, such as Basis Pursuit (BP) and greedy pursuit algorithms such as Orthogonal Matching Pursuit (OMP) and Subspace Pursuit (SP). This manuscript proposes a novel semi-greedy recovery approach, namely A* Orthogonal Matching Pursuit (A*OMP). A*OMP performs A* search to look for the sparsest solution on a tree whose paths grow similar to the Orthogonal Matching Pursuit (OMP) algorithm. Paths on the tree are evaluated according to a cost function, which should compensate for different path lengths. For this purpose, three different auxiliary structures are defined, including novel dynamic ones. A*OMP also incorporates pruning techniques which enable practical applications of the algorithm. Moreover, the adjustable search parameters provide means for a complexity-accuracy trade-off. We demonstrate the reconstruction ability of the proposed scheme on both synthetically generated data and images using Gaussian and Bernoulli observation matrices, where A*OMP yields less reconstruction error and higher exact recovery frequency than BP, OMP and SP. Results also indicate that novel dynamic cost functions provide improved results as compared to a conventional choice.
机译:压缩感测是一个发展中的领域,旨在重建以缩小的尺寸获取的稀疏信号,这使得恢复过程无法确定。所需的解决方案是由于稀疏性而具有最小0范数的解决方案,但是解决0 0最小化问题不切实际。常用的技术包括诸如基追踪(BP)的β1最小化和诸如正交匹配追踪(OMP)和子空间追踪(SP)的贪婪追踪算法。该手稿提出了一种新颖的半贪婪恢复方法,即A *正交匹配追踪(A * OMP)。 A * OMP执行A *搜索以在路径增长类似于正交匹配追踪(OMP)算法的树上寻找最稀疏的解决方案。根据成本函数评估树上的路径,该函数应补偿不同的路径长度。为此,定义了三种不同的辅助结构,包括新颖的动态结构。 A * OMP还结合了修剪技术,可实现该算法的实际应用。而且,可调节的搜索参数提供了用于复杂度-准确性折衷的手段。我们使用高斯和伯努利观测矩阵证明了该方案在合成生成的数据和图像上的重建能力,其中A * OMP产生的重建误差比BP,OMP和SP少,重建误差更高。结果还表明,与传统选择相比,新颖的动态成本函数可提供更好的结果。

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