In the second part of the series papers, we set out to study the algorithmic efficiency of sparse sensing. Stemmed from co-prime sensing, we propose a generalized framework, termed Diophantine sensing, which utilizes generic Diophantine equation theory and higher-order sparse ruler to strengthen the sampling time, the degree of freedom (DoF), and the sampling sparsity, simultaneously. Resorting to higher-moment statistics, the proposed Diophantine framework presents two fundamental improvements. First, on frequency estimation, we prove that given arbitrarily large down-sampling rates, there exist sampling schemes where the number of samples needed is only proportional to the sum of DoF and the number of snapshots required, which implies a linear sampling time. Second, on Direction-of-arrival (DoA) estimation, we propose two generic array constructions such that given N sensors, the minimal distance between sensors can be as large as a polynomial of N, O(N^q), which indicates that an arbitrarily sparse array (with arbitrarily small mutual coupling) exists given sufficiently many sensors. In addition, asymptotically, the proposed array configurations produce the best known DoF bound compared to existing sparse array designs.
翻译:在系列论文的第二部分,我们开始研究稀有感测的算法效率。从共质感测中,我们提出一个通用框架,称为Diophantine 感测,它使用一般的Diophantine 等式理论和更高层次的稀疏标尺,同时加强取样时间、自由程度和采样宽度。在采用高调统计方法时,拟议的Diophantine框架提出了两个根本性的改进。首先,在频率估计方面,我们证明,由于任意降压率很大,存在着一些抽样计划,需要的样品数量仅与DoF总和和和所需快照数成比例,这意味着要有一个线性采样时间。第二,在 " 到达方向(DoA)估计 " 上,我们建议两种通用阵列结构,例如,根据N传感器,传感器之间的最小距离可以相当于N(O)(Nq)的多诺(O)(Nq),它表明,存在任意稀散的阵列(任意小的相互联动),因为有相当多的传感器。此外,除了已知的多的阵列外,现有阵列的阵列还比较了已知的阵列。此外,还有已知的阵列。