Within the Compressive Sensing (CS) paradigm, sparse signals can be reconstructed based on a reduced set of measurements. Reliability of the solution is determined by the uniqueness condition. With its mathematically tractable and feasible calculation, coherence index is one of very few CS metrics with a considerable practical importance. In this paper, we propose an improvement of the coherence based uniqueness relation for the matching pursuit algorithms. Starting from a simple and intuitive derivation of the standard uniqueness condition based on the coherence index, we derive a less conservative coherence index-based lower bound for signal sparsity. The results are generalized to the uniqueness condition of the $l_0$-norm minimization for a signal represented in two orthonormal bases.
翻译:在压缩遥感(CS)范式内,根据一套减少的测量,可以对稀有信号进行重建。解决方案的可靠性由独特性条件决定。通过数学可移动和可行的计算,一致性指数是极少数具有相当实际重要性的CS衡量标准之一。在本文中,我们建议改进匹配搜索算法的基于一致性的独特性关系。从基于一致性指数的标准独特性条件简单和直观的推断开始,我们得出一个较保守的基于一致性指数的较低信标宽度约束线。结果被广泛推广到以两个正态基数表示的信号最小化为$_0的最小化信号的独特性条件。