TY - JOUR
T1 - Fast and Provable Hankel Tensor Completion for Multi-measurement Spectral Compressed Sensing
AU - Li, Jinsheng
AU - Zhang, Xu
AU - Wu, Shuang
AU - Cui, Wei
N1 - Publisher Copyright:
© 1991-2012 IEEE.
PY - 2025
Y1 - 2025
N2 - In this paper, we introduce a novel low-rank Hankel tensor completion approach to address the problem of multi-measurement spectral compressed sensing. By lifting the multiple signals to a Hankel tensor, we reformulate this problem into a low-rank Hankel tensor completion task, exploiting the spectral sparsity via the low multilinear rankness of the tensor. Furthermore, we design a scaled gradient descent algorithm for Hankel tensor completion (ScalHT), which integrates the low-rank Tucker decomposition with the Hankel structure. Crucially, we derive novel fast computational formulations that leverage the interaction between these two structures, achieving up to an O(min{s,n})-fold improvement in storage and computational efficiency compared to the existing algorithms, where n is the length of signal, s is the number of measurement vectors. Beyond its practical efficiency, ScalHT is backed by rigorous theoretical guarantees: we establish both recovery and linear convergence guarantees, which, to the best of our knowledge, are the first of their kind for low-rank Hankel tensor completion. Numerical simulations show that our method exhibits significantly lower computational and storage costs while delivering superior recovery performance compared to prior arts.
AB - In this paper, we introduce a novel low-rank Hankel tensor completion approach to address the problem of multi-measurement spectral compressed sensing. By lifting the multiple signals to a Hankel tensor, we reformulate this problem into a low-rank Hankel tensor completion task, exploiting the spectral sparsity via the low multilinear rankness of the tensor. Furthermore, we design a scaled gradient descent algorithm for Hankel tensor completion (ScalHT), which integrates the low-rank Tucker decomposition with the Hankel structure. Crucially, we derive novel fast computational formulations that leverage the interaction between these two structures, achieving up to an O(min{s,n})-fold improvement in storage and computational efficiency compared to the existing algorithms, where n is the length of signal, s is the number of measurement vectors. Beyond its practical efficiency, ScalHT is backed by rigorous theoretical guarantees: we establish both recovery and linear convergence guarantees, which, to the best of our knowledge, are the first of their kind for low-rank Hankel tensor completion. Numerical simulations show that our method exhibits significantly lower computational and storage costs while delivering superior recovery performance compared to prior arts.
KW - gradient descent
KW - Hankel tensor completion
KW - Multiple measurement vectors
KW - spectral compressed sensing
UR - https://www.scopus.com/pages/publications/105016648944
U2 - 10.1109/TSP.2025.3607195
DO - 10.1109/TSP.2025.3607195
M3 - Article
AN - SCOPUS:105016648944
SN - 1053-587X
JO - IEEE Transactions on Signal Processing
JF - IEEE Transactions on Signal Processing
ER -