Off-the-grid Blind Deconvolution and Demixing

08/07/2023
by   Saeed Razavikia, et al.
0

We consider the problem of gridless blind deconvolution and demixing (GB2D) in scenarios where multiple users communicate messages through multiple unknown channels, and a single base station (BS) collects their contributions. This scenario arises in various communication fields, including wireless communications, the Internet of Things, over-the-air computation, and integrated sensing and communications. In this setup, each user's message is convolved with a multi-path channel formed by several scaled and delayed copies of Dirac spikes. The BS receives a linear combination of the convolved signals, and the goal is to recover the unknown amplitudes, continuous-indexed delays, and transmitted waveforms from a compressed vector of measurements at the BS. However, in the absence of any prior knowledge of the transmitted messages and channels, GB2D is highly challenging and intractable in general. To address this issue, we assume that each user's message follows a distinct modulation scheme living in a known low-dimensional subspace. By exploiting these subspace assumptions and the sparsity of the multipath channels for different users, we transform the nonlinear GB2D problem into a matrix tuple recovery problem from a few linear measurements. To achieve this, we propose a semidefinite programming optimization that exploits the specific low-dimensional structure of the matrix tuple to recover the messages and continuous delays of different communication paths from a single received signal at the BS. Finally, our numerical experiments show that our proposed method effectively recovers all transmitted messages and the continuous delay parameters of the channels with a sufficient number of samples.

READ FULL TEXT
research
11/11/2021

Joint Radar-Communications Processing from a Dual-Blind Deconvolution Perspective

We consider a general spectral coexistence scenario, wherein the channel...
research
06/10/2022

Multi-dimensional dual-blind deconvolution approach toward joint radar-communications

We consider a joint multiple-antenna radar-communications system in a co...
research
01/29/2018

Secure Massive IoT Using Hierarchical Fast Blind Deconvolution

The Internet of Things and specifically the Tactile Internet give rise t...
research
11/16/2022

Beurling-Selberg Extremization for Dual-Blind Deconvolution Recovery in Joint Radar-Communications

Recent interest in integrated sensing and communications has led to the ...
research
08/08/2022

Dual-Blind Deconvolution for Overlaid Radar-Communications Systems

The increasingly crowded spectrum has spurred the design of joint radar-...
research
03/23/2023

Multi-Antenna Dual-Blind Deconvolution for Joint Radar-Communications via SoMAN Minimization

Joint radar-communications (JRC) has emerged as a promising technology f...
research
02/01/2018

Predicting Wireless Channel Features using Neural Networks

We investigate the viability of using machine-learning techniques for es...

Please sign up or login with your details

Forgot password? Click here to reset