In this paper, with the aid of the powerful Restricted Isometry Constant (RIC), a deterministic (or say non-stochastic) analysis, which includes a series of sufficient conditions (related to the RIC order) and their resultant error estimates, is established for the weighted Basis Pursuit De-Noising (BPDN) to guarantee the robust signal recovery when Partially Known Support Information (PKSI) of the signal is available. Specifically, the obtained conditions extend nontrivially the ones induced recently for the traditional constrained weighted $\ell_{1}$-minimization model to those for its unconstrained counterpart, i.e., the weighted BPDN. The obtained error estimates are also comparable to the analogous ones induced previously for the robust recovery of the signals with PKSI from some constrained models. Moreover, these results to some degree may well complement the recent investigation of the weighted BPDN which is based on the stochastic analysis.
翻译:在本文中,在强大的限制分量常数(RIC)的帮助下,为加权基础推进脱贫(BPDN)设定了确定性(或称非随机性)分析,其中包括一系列充分条件(与 RIC 命令有关)及其由此产生的误差估计,以保证在部分已知的信号支持信息(PKSI)得到时,信号的强力恢复。具体地说,获得的条件将传统的限制加权值$@%1}美元最近引发的确定性(或称非随机性)分析模式扩大到未受限制的对应方,即加权的BPDN。 获得的误差估计也类似于以前为从某些受限模型中强有力恢复PKSI信号而引发的类似条件。此外,这些结果在某种程度上可以补充最近对基于随机分析的加权的BPDN的调查。