Recent interest in integrated sensing and communications has led to the design of novel signal processing techniques to recover information from an overlaid radar-communications signal. Here, we focus on a spectral coexistence scenario, wherein the channels and transmit signals of both radar and communications systems are unknown to the common receiver. In this dual-blind deconvolution (DBD) problem, the receiver admits a multi-carrier wireless communications signal that is overlaid with the radar signal reflected off multiple targets. The communications and radar channels are represented by continuous-valued range-times or delays corresponding to multiple transmission paths and targets, respectively. Prior works addressed recovery of unknown channels and signals in this ill-posed DBD problem through atomic norm minimization but contingent on individual minimum separation conditions for radar and communications channels. In this paper, we provide an optimal joint separation condition using extremal functions from the Beurling-Selberg interpolation theory. Thereafter, we formulate DBD as a low-rank modified Hankel matrix retrieval and solve it via nuclear norm minimization. We estimate the unknown target and communications parameters from the recovered low-rank matrix using multiple signal classification (MUSIC) method. We show that the joint separation condition also guarantees that the underlying Vandermonde matrix for MUSIC is well-conditioned. Numerical experiments validate our theoretical findings.
翻译:最近对综合遥感和通信的兴趣导致设计了新型信号处理技术,以便从覆盖式雷达通信信号信号中恢复信息。这里,我们侧重于光谱共存设想,即普通接收器不知道雷达和通信系统的频道和信号,在这个双盲分解问题中,接收器承认一个多载载无线通信信号,该信号与从多个目标反映的雷达信号覆盖在一起。通信和雷达频道分别代表着与多个传输路径和目标相对应的连续有价值的距离时间或延迟。以前的工作是通过原子规范最小化,但取决于雷达和通信频道的个别最低分离条件,从这个错误的DBD问题中恢复未知的频道和信号。在本文中,接收器承认一个最佳的联合分离条件,使用Beurling-Selberg国际理论的极端功能。之后,我们将DBD编成一个低级修改式的汉克尔矩阵检索和通过核规范最小化解决它。我们用多种信号分类(MUSIC)的理论模型来估计回收的低位矩阵中未知的目标和通信参数。我们用多级信号分类(MISIC)的理论模型测定了联合条件。