English

Blind Deconvolution Demixing using Modulated Inputs

Signal Processing 2026-02-17 v1

Abstract

This paper focuses on solving a challenging problem of blind deconvolution demixing involving modulated inputs. Specifically, multiple input signals sn(t)s_n(t), each bandlimited to BB Hz, are modulated with known random sequences rn(t)r_n(t) that alter at rate QQ. Each modulated signal is convolved with a different M tap channel of impulse response hn(t)h_n(t), and the outputs of each channel are added at a common receiver to give the observed signal y(t)=n=1N(rn(t)sn(t))hn(t)y(t)=\sum_{n=1}^N (r_n(t)\odot s_n(t))\circledast h_n(t), where \odot is the point wise multiplication, and \circledast is circular convolution. Given this observed signal y(t)y(t), we are concerned with recovering sn(t)s_n(t) and hn(t)h_n(t). We employ deterministic subspace assumption for the input signal sn(t)s_n(t) and keep the channel impulse response hn(t)h_n(t) arbitrary. We show that if modulating sequence is altered at a rate QN2(B+M)Q \geq N^2 (B+M) and sample complexity bound is obeyed then all the signals and the channels, {sn(t),hn(t)}n=1N\{s_n(t),h_n(t)\}_{n=1}^N, can be estimated from the observed mixture y(t)y(t) using gradient descent algorithm. We have performed extensive simulations that show the robustness of our algorithm and used phase transitions to numerically investigate the theoretical guarantees provided by our algorithm.

Keywords

Cite

@article{arxiv.2602.13481,
  title  = {Blind Deconvolution Demixing using Modulated Inputs},
  author = {Humera Hameed and Ali Ahmed},
  journal= {arXiv preprint arXiv:2602.13481},
  year   = {2026}
}
R2 v1 2026-07-01T10:36:18.497Z