Logo image
Estimation of stochastic signals under partially missing information
Journal article   Peer reviewed

Estimation of stochastic signals under partially missing information

A. Torokhti, P. Howlett and H. Laga
Signal Processing, Vol.111, pp.199-209
2015
url
Link to Published Version *Subscription may be requiredView

Abstract

A new method for the estimation of a large set of stochastic signals is proposed and justified. A specific restriction is that a priori information on the set of input–output signal pairs can only be obtained, in the form of covariance matrices (or their estimates), for a small subset of signal pairs. Nevertheless it is required to estimate each reference signal. We call this procedure signal estimation under partially missing information. The conceptual foundation of the proposed filter is an optimal least squares Hadamard-quadratic estimate of the incremental change to the observed signal pairs, extended by a natural linear interpolation to an estimated value for each intermediate reference signal. The new filter is expressed in terms of Moore–Penrose pseudo-inverse matrices and therefore is always well-defined.

Details

Metrics

InCites Highlights

These are selected metrics from InCites Benchmarking & Analytics tool, related to this output

Citation topics
4 Electrical Engineering, Electronics & Computer Science
4.29 Automation & Control Systems
4.29.1383 System Identification
Web Of Science research areas
Engineering, Electrical & Electronic
ESI research areas
Engineering
Logo image