Litcius/Paper detail

2D Compressed Sensing Using Nonlocal Low-Rank Prior Reconstruction for Cipher-Image Coding

Bo Zhang, Di Xiao, Ying Li, Lei Yang

2022IEEE Signal Processing Letters14 citationsDOI

Abstract

In recent years, cipher-image coding by using compressed sensing (CS) has became a hot topic. However, the ratio-distortion (R-D) performance of the previous methods are barely satisfactory. In order to address this concern, a 2D CS (2DCS) scheme by using nonlocal low-rank prior (NLP) reconstruction is proposed in this letter. Firstly, the scrambling encryption is applied to mask the plaintext image. Secondly, the cipher image is compressed by 2DCS. Lastly, an iterative singular value thresholding (ISVT) algorithm is developed, which can reconstruct the image effectively by exploring the NLP information of the image. Simulation results show that the proposed method outperforms the previous CS-based methods in terms of R-D performance.

Topics & Concepts

PlaintextComputer scienceEncryptionAlgorithmScramblingArtificial intelligenceIterative reconstructionImage (mathematics)ThresholdingCiphertextDistortion (music)CipherComputer visionPattern recognition (psychology)Operating systemBandwidth (computing)AmplifierComputer networkSparse and Compressive Sensing TechniquesImage Processing Techniques and ApplicationsAdvanced Image Processing Techniques
2D Compressed Sensing Using Nonlocal Low-Rank Prior Reconstruction for Cipher-Image Coding | Litcius