The increasingly crowded spectrum has spurred the design of joint radar-communications systems that share hardware resources and efficiently use the radio frequency spectrum. We study a general spectral coexistence scenario, wherein the channels and transmit signals of both radar and communications systems are unknown at the receiver. In this dual-blind deconvolution (DBD) problem, a common 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-time and Doppler velocities of multiple transmission paths and multiple targets. We exploit the sparsity of both channels to solve the highly ill-posed DBD problem by casting it into a sum of multivariate atomic norms (SoMAN) minimization. We devise a semidefinite program to estimate the unknown target and communications parameters using the theories of positive-hyperoctant trigonometric polynomials (PhTP). Our theoretical analyses show that the minimum number of samples required for perfect recovery scale logarithmically with the maximum of the radar targets and communications paths rather than their sum. We show that our SoMAN method and PhTP formulations are also applicable to more general scenarios such as unsynchronized transmission, presence of noise, and multiple emitters. Numerical experiments demonstrate great performance enhancements during the parameter recovery under different scenarios.
翻译:日益拥挤的频谱促使设计了共享硬件资源和高效使用无线电频谱的联合雷达通信系统; 我们研究了一般光谱共存情景,接收器不知道雷达和通信系统的频道和信号如何传递; 在双盲分解(DBD)问题中,一个普通接收器接受一个多载带无线通信信号,该信号与雷达信号覆盖在多个目标上; 通信和雷达频道由连续的测距时间和多普勒速度代表着多个传输路径和多个目标。 我们利用两个频道的宽度来解决高度不良的DBD问题,将它投放到多变原子规范(Soman)的总和中。 我们设计了一个半确定程序,用正波波谱三维测量多位数的理论来估计未知的目标和通信参数。 我们的理论分析表明,在精确度上最优化的恢复比例和最大雷达目标与通信路径的孔径问题,而不是其总和超同步的路径,我们所设计的SOMTP模型和多级变射程中,也显示我们的超声波变变的参数。