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conference paper not in proceedings

Multilinear Low-Rank Tensors on Graphs & Applications

Shahid, Nauman  
•
Grassi, Francesco  
•
Vandergheynst, Pierre  
2016

We propose a new framework for the analysis of low- rank tensors which lies at the intersection of spectral graph theory and signal processing. As a first step, we present a new graph based low-rank decomposition which approximates the classical low-rank SVD for matrices and multi- linear SVD for tensors. Then, building on this novel decomposition we construct a general class of convex optimization problems for approximately solving low-rank tensor inverse problems, such as tensor Robust PCA. The whole frame- work is named as “Multilinear Low-rank tensors on Graphs (MLRTG)”. Our theoretical analysis shows: 1) MLRTG stands on the notion of approximate stationarity of multi- dimensional signals on graphs and 2) the approximation error depends on the eigen gaps of the graphs. We demonstrate applications for a wide variety of 4 artificial and 12 real tensor datasets, such as EEG, FMRI, BCI, surveillance videos and hyperspectral images. Generalization of the tensor concepts to non-euclidean domain, orders of magnitude speed-up, low-memory requirement and significantly enhanced performance at low SNR are the key aspects of our framework.

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Type
conference paper not in proceedings
ArXiv ID

1611.04835

Author(s)
Shahid, Nauman  
Grassi, Francesco  
Vandergheynst, Pierre  
Date Issued

2016

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LTS2  
Available on Infoscience
November 16, 2016
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/131090
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