Title :
Sequential Unfolding SVD for Tensors With Applications in Array Signal Processing
Author :
Salmi, Jussi ; Richter, Andreas ; Koivunen, Visa
Author_Institution :
Dept. of Signal Process. & Acoust., Helsinki Univ. of Technol., Espoo, Finland
Abstract :
This paper contributes to the field of higher order (N > 2) tensor decompositions in signal processing. A novel PARATREE tensor model is introduced, accompanied with sequential unfolding SVD (SUSVD) algorithm. SUSVD, as the name indicates, applies a matrix singular value decomposition sequentially on the unfolded tensor reshaped from the right hand basis vectors of the SVD of the previous mode. The consequent PARATREE model is related to the well known family of PARAFAC tensor decomposition models. Both of them describe a tensor as a sum of rank-1 tensors, but PARATREE has several advantages over PARAFAC, when it is applied as a lower rank approximation technique. PARATREE is orthogonal (due to SUSVD), fast and reliable to compute, and the order (or rank) of the decomposition can be adaptively adjusted. The low rank PARATREE approximation can be applied for, e.g., reducing computational complexity in inverse problems, measurement noise suppression as well as data compression. The benefits of the proposed algorithm are illustrated through application examples in signal processing in comparison to PARAFAC and HOSVD.
Keywords :
approximation theory; array signal processing; singular value decomposition; tensors; vectors; PARAFAC tensor decomposition model; PARATREE tensor decomposition model; SUSVD algorithm; array signal processing; computational complexity; data compression; inverse problem; lower-rank approximation technique; matrix singular value decomposition; measurement noise suppression; right-hand basis vector; sequential unfolding SVD algorithm; Array signal processing; MIMO; SVD; channel modeling; low rank approximation; tensor decompositions;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2009.2027740