The orthogonal matching pursuit (OMP) is one of the mainstream algorithms for sparse data reconstruction or approximation. It acts as a driving force for the development of several other greedy methods for sparse data reconstruction, and it also plays a vital role in the development of compressed sensing theory for sparse signal and image reconstruction. In this paper, we propose the so-called dynamic orthogonal matching pursuit (DOMP) and enhanced dynamic orthogonal matching pursuit (EDOMP) algorithms which are more efficient than OMP for sparse data reconstruction from a numerical point of view. We carry out a rigorous analysis to establish the reconstruction error bound for DOMP under the restricted isometry property of the measurement matrix. The main result claims that the reconstruction error via DOMP can be controlled and measured in terms of the number of iterations, sparsity level of data, and the noise level of measurements. Moveover, the finite convergence of DOMP for a class of large-scale compressed sensing problems is also shown.
翻译:正交匹配追踪(OMP)是稀疏数据重构或逼近的主流算法之一,它是推动其他贪心算法发展以及稀疏信号和图像重构压缩感知理论发展的重要驱动力。本文提出了所谓的动态正交匹配追踪(DOMP)和增强的动态正交匹配追踪(EDOMP)算法,从数值角度来看,它们比OMP更有效。我们进行了严格的分析,以建立DOMP在测量矩阵的限制等距性条件下的重构误差界。主要结果声称,DOMP的重构误差可以通过迭代次数、数据的稀疏程度和测量噪声水平来控制和衡量。此外,还证明了DOMP针对一类大规模压缩感知问题的有限收敛性。