Title :
Power-Constrained Sparse Gaussian Linear Dimensionality Reduction Over Noisy Channels
Author :
Shirazinia, Amirpasha ; Dey, Subhrakanti
Author_Institution :
Dept. of Eng. Sci., Uppsala Univ., Uppsala, Sweden
Abstract :
In this paper, we investigate power-constrained sensing matrix design in a sparse Gaussian linear dimensionality reduction framework. Our study is carried out in a single-terminal setup as well as in a multi-terminal setup consisting of orthogonal or coherent multiple access channels (MAC). We adopt the mean square error (MSE) performance criterion for sparse source reconstruction in a system where source-to-sensor channel(s) and sensor-to-decoder communication channel(s) are noisy. Our proposed sensing matrix design procedure relies upon minimizing a lower-bound on the MSE in single- and multiple-terminal setups. We propose a three-stage sensing matrix optimization scheme that combines semi-definite relaxation (SDR) programming, a low-rank approximation problem and power-rescaling. Under certain conditions, we derive closed-form solutions to the proposed optimization procedure. Through numerical experiments, by applying practical sparse reconstruction algorithms, we show the superiority of the proposed scheme by comparing it with other relevant methods. This performance improvement is achieved at the price of higher computational complexity. Hence, in order to address the complexity burden, we present an equivalent stochastic optimization method to the problem of interest that can be solved approximately, while still providing a superior performance over the popular methods.
Keywords :
approximation theory; compressed sensing; mathematical programming; matrix algebra; mean square error methods; MAC; SDR programming; compressed sensing; low-rank approximation problem; mean square error performance criterion; multiple access channels; noisy channels; power-constrained sensing matrix design; power-constrained sparse Gaussian linear dimensionality Reduction; semi-definite relaxation programming; sensor-to-decoder communication channel; source-to-sensor channel; sparse source reconstruction; stochastic optimization method; three-stage sensing matrix optimization scheme; Coherence; Estimation; Noise measurement; Optimization; Reconstruction algorithms; Sensors; Sparse matrices; Compressed sensing; MAC; MSE; convex optimization; low rank; sensing matrix; sparse gaussian;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2015.2455521