Title :
Deterministic Sensing Matrices Arising From Near Orthogonal Systems
Author :
Shuxing Li ; Ge, Gennian
Author_Institution :
Dept. of Math., Zhejiang Univ., Hangzhou, China
Abstract :
Compressed sensing is a novel sampling theory, which provides a fundamentally new approach to data acquisition. It asserts that a sparse or compressible signal can be reconstructed from much fewer measurements than traditional methods. A central problem in compressed sensing is the construction of the sensing matrix. While random sensing matrices have been studied intensively, only a few deterministic constructions are known. Among them, most constructions are based on coherence, which essentially generates matrices with low coherence. In this paper, we introduce the concept of near orthogonal systems to characterize the matrices with low coherence, which lie in the heart of many different applications. The constructions of these near orthogonal systems lead to deterministic constructions of sensing matrices. We obtain a series of m×n binary sensing matrices with sparsity level k=Θ(m(1/2)) or k=O((m/logm)(1/2)). In particular, some of our constructions are the best possible deterministic ones based on coherence. We conduct a lot of numerical experiments to show that our matrices arising from near orthogonal systems outperform several typical known sensing matrices.
Keywords :
compressed sensing; signal reconstruction; sparse matrices; binary sensing matrices; compressed sensing; data acquisition; deterministic sensing matrices; near orthogonal system; random sensing matrices; sampling theory; sensing matrix construction; signal reconstruction; Coherence; Compressed sensing; Educational institutions; Matching pursuit algorithms; Sensors; Sparse matrices; Zinc; Compressed sensing; coherence; deterministic construction; near orthogonal system;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2014.2303973