Compressive Sensing of Sparse Tensors
Shmuel Friedland, Qun Li, Dan Schonfeld

TL;DR
This paper introduces Generalized Tensor Compressive Sensing (GTCS), a novel framework for efficiently acquiring and reconstructing higher-order tensor data, outperforming existing methods in accuracy and speed.
Contribution
The paper proposes GTCS, a unified tensor CS framework that preserves tensor structure and reduces computational complexity during reconstruction.
Findings
GTCS outperforms KCS and MWCS in accuracy and speed
GTCS provides simultaneous acquisition and compression of tensor data
GTCS offers serial and parallel reconstruction procedures
Abstract
Compressive sensing (CS) has triggered enormous research activity since its first appearance. CS exploits the signal's sparsity or compressibility in a particular domain and integrates data compression and acquisition, thus allowing exact reconstruction through relatively few non-adaptive linear measurements. While conventional CS theory relies on data representation in the form of vectors, many data types in various applications such as color imaging, video sequences, and multi-sensor networks, are intrinsically represented by higher-order tensors. Application of CS to higher-order data representation is typically performed by conversion of the data to very long vectors that must be measured using very large sampling matrices, thus imposing a huge computational and memory burden. In this paper, we propose Generalized Tensor Compressive Sensing (GTCS)--a unified framework for…
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