DocumentCode
51927
Title
Analytical Performance Assessment of Multi-Dimensional Matrix- and Tensor-Based ESPRIT-Type Algorithms
Author
Roemer, Florian ; Haardt, Martin ; Del Galdo, Giovanni
Author_Institution
Inst. of Inf. Technol., Ilmenau Univ. of Technol., Ilmenau, Germany
Volume
62
Issue
10
fYear
2014
fDate
15-May-14
Firstpage
2611
Lastpage
2625
Abstract
In this paper we present a generic framework for the asymptotic performance analysis of subspace-based parameter estimation schemes. It is based on earlier results on an explicit first-order expansion of the estimation error in the signal subspace obtained via an SVD of the noisy observation matrix. We extend these results in a number of aspects. Firstly, we demonstrate that an explicit first-order expansion of the Higher-Order SVD (HOSVD)-based subspace estimate can be derived. Secondly, we show how to obtain explicit first-order expansions of the estimation error of arbitrary ESPRIT-type algorithms and provide the expressions for R-D Standard ESPRIT, R-D Unitary ESPRIT, R-D Standard Tensor-ESPRIT, as well as R-D Unitary Tensor-ESPRIT. Thirdly, we derive closed-form expressions for the mean square error (MSE) and show that they only depend on the second-order moments of the noise. Hence, to apply this framework we only need the noise to be zero mean and possess finite second order moments. Additional assumptions such as Gaussianity or circular symmetry are not needed.
Keywords
direction-of-arrival estimation; matrix algebra; mean square error methods; parameter estimation; singular value decomposition; tensors; HOSVD; MSE; R-D standard tensor ESPRIT; R-D unitary tensor ESPRIT; arbitrary ESPRIT-type algorithms; estimation error; explicit first-order expansion; higher order singular value decomposition; matrix based ESPRIT-type algorithms; mean square error; noisy observation matrix; performance analysis; signal subspace; subspace based parameter estimation; tensor based ESPRIT-type algorithms; Estimation error; Noise; Parameter estimation; Performance analysis; Signal processing algorithms; Standards; Tensile stress; Direction-of-arrival estimation; performance analysis; subspace methods; tensors;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2014.2313530
Filename
6778109
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