Title :
Optimum Compression of a Noisy Measurement for Transmission Over a Noisy Channel
Author :
Yuan Wang ; Haonan Wang ; Scharf, Louis L.
Author_Institution :
Dept. of Stat., Colorado State Univ., Fort Collins, CO, USA
Abstract :
This paper is motivated by sensing and wireless communication, where data compression or dimension reduction may be used to reduce the required communication bandwidth. High-dimensional measurements are converted into low-dimensional representations through linear compression. Our aim is to compress a noisy sensor measurement, allowing for the fact that the compressed measurement will then be transmitted over a noisy channel. We give the closed-form expression for the optimal compression matrix that minimizes the trace or determinant of the error covariance matrix. We show that the solutions share a common architecture consisting of a canonical coordinate transformation, scaling by coefficients which account for canonical correlations and channel noise variance, followed by a coordinate transformation into the sub-dominant invariant subspace of the channel noise. Furthermore, we explore the design problem with respect to more general criteria and provide a unified factorization for the corresponding optimal compression matrix. A necessary condition is obtained for the optimal compression.
Keywords :
compressed sensing; covariance matrices; data compression; determinants; wireless channels; canonical coordinate transformation; canonical correlations; channel noise variance; compressed measurement; data compression; dimension reduction; error covariance matrix; high-dimensional measurements; linear compression; low-dimensional representations; noisy channel; noisy sensor measurement; optimal compression matrix; subdominant invariant subspace; unified factorization; wireless communication; Acoustic measurements; Covariance matrices; Information rates; Measurement uncertainty; Noise; Noise measurement; Vectors; Canonical coordinates; compressive sensing; dimension reduction; optimal linear compression; precoding and equalizing; reduced-rank filtering; signal-plus-noise model;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2014.2298374