Stable, Robust and Super Fast Reconstruction of Tensors Using Multi-Way Projections
Cesar F. Caiafa, Andrzej Cichocki

TL;DR
This paper presents a fast, stable, and robust tensor reconstruction method using multi-way projections in compressed sensing, exploiting low multilinear-rank structures and requiring measurements in only two modes, outperforming iterative sparsity-based methods.
Contribution
It introduces a non-iterative analytical reconstruction formula for multidimensional tensors that is stable, robust, and requires fewer measurements, with demonstrated efficiency on real-world data.
Findings
Reconstruction based on measurements in only two modes is effective.
The method is non-iterative and computationally super fast.
Experimental results confirm stability and robustness on 2D and 3D signals.
Abstract
In the framework of multidimensional Compressed Sensing (CS), we introduce an analytical reconstruction formula that allows one to recover an th-order data tensor from a reduced set of multi-way compressive measurements by exploiting its low multilinear-rank structure. Moreover, we show that, an interesting property of multi-way measurements allows us to build the reconstruction based on compressive linear measurements taken only in two selected modes, independently of the tensor order . In addition, it is proved that, in the matrix case and in a particular case with rd-order tensors where the same 2D sensor operator is applied to all mode-3 slices, the proposed reconstruction is stable in the sense that the approximation error is comparable to the one provided by the best…
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