Litcius/Paper detail

Semi-Tensor Product Compressed Sensing With Its Applications: A Review

Rongpei Zhou, Rongfa Li, Yaqian Wu, Jie Chen, Jin Hong, Lisu Yu, Qiegen Liu, Yudong Zhang

2024IEEE Sensors Journal7 citationsDOI

Abstract

Recently, as an emerging signal processing technology, the semi-tensor product compressed sensing (STP-CS) has attracted widespread attention in the fields of image processing, communications, and bioinformatics. This article reviews the theoretical foundations, algorithmic designs, and practical applications of STP-CS. It begins by revisiting the basic concepts of compressed sensing (CS) and the definition of the semi-tensor product (STP), followed by a detailed discussion on the theoretical model of STP-CS, optimization of the measurement matrix, and reconstruction algorithms. Furthermore, the article explores the practical applications of STP-CS in areas such as sensor nodes, visual security, image encryption, and spectrum sensing, analyzing its performance advantages and potential challenges in these fields. A comprehensive analysis indicates that STP-CS offers significant benefits in saving storage space, reducing computational complexity, and enhancing data security, making it a promising technology in the field of signal processing.

Topics & Concepts

Compressed sensingComputer scienceProduct (mathematics)Tensor (intrinsic definition)Artificial intelligenceMathematicsGeometryPure mathematicsSparse and Compressive Sensing Techniques
Semi-Tensor Product Compressed Sensing With Its Applications: A Review | Litcius