Title :
Joint Interference Mitigation and Data Recovery in Compressive Domain: A Sparse MLE Approach
Author :
An Liu ; Lau, Vincent K. N.
Author_Institution :
Dept. of Electron. & Comput. Eng., Hong Kong Univ. of Sci. & Technol., Hong Kong, China
Abstract :
We consider the problem where a receiver acquires information (data) corrupted by interference and noise. Both the information and interference are assumed to have a sparse structure. This problem occurs in many applications such as data demodulation in cellular systems. The joint interference mitigation and data recovery is formulated as a sparse maximum likelihood estimation (MLE) problem which maximizes the associated likelihood function under individual sparsity levels (ISLs) constraints. This sparse MLE framework can fully exploit the individual sparse structure of the information and interference to improve the data recovery performance at the receiver. We propose an alternating optimization (AO) recovery algorithm to solve the non-convex sparse MLE problem. To analyze the performance of the proposed AO algorithm, we introduce a new kind of restricted isometry property (RIP) called the ISLs-RIP. Under the ISLs-RIP conditions, we show that the proposed AO algorithm converges to the optimal solution of the sparse MLE problem. We also derive an upper bound of the corresponding estimation error for the information. Finally, we extend the above results and algorithms to the case when the receiver only has statistical knowledge of the ISLs. Simulations show that the proposed solution achieves significant gain over various baselines.
Keywords :
cellular radio; convex programming; maximum likelihood estimation; radiofrequency interference; ISL constraints; MLE problem; RIP; associated likelihood function; cellular systems; compressive domain; data demodulation; data recovery; data recovery performance; estimation error; individual sparsity levels; joint interference mitigation; noise; nonconvex sparse MLE problem; optimal solution; recovery algorithm; restricted isometry property; sparse MLE approach; sparse MLE framework; sparse maximum likelihood estimation; sparse structure; Algorithm design and analysis; Interference; Joints; Maximum likelihood estimation; Receivers; Signal processing algorithms; Vectors; Compressive sensing; interference mitigation; sparse MLE;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2014.2348941