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A Novel Encryption-Then-Lossy-Compression Scheme of Color Images Using Customized Residual Dense Spatial Network

Chuntao Wang, Tianjian Zhang, Hao Chen, Qiong Huang, Jiangqun Ni, Xinpeng Zhang

2022IEEE Transactions on Multimedia21 citationsDOI

Abstract

Nowadays it has still remained as a big challenge to efficiently compress color images in the encrypted domain. In this paper we present a novel deep-learning-based approach to encryption-then-lossy-compression (ETC) of color images by incorporating the domain knowledge of the encrypted image reconstruction process. In specific, a simple yet effective uniform down-sampling is utilized for lossy compression of images encrypted with a modulo-256 addition, and the task of image reconstruction from an encrypted down-sampled image is then formulated as a problem of constrained super-resolution (SR) reconstruction. A customized residual dense spatial network (RDSN) is proposed to solve the formulated constrained SR task by taking advantage of spatial attention mechanism (SAM), global skip connection (GSC), and uniform down-sampling constraint (UDC) that is specific to an ETC system. Extensive experimental results show that the proposed ETC scheme achieves significant performance improvement compared with other state-of-the-art ETC methods, indicating the feasibility and effectiveness of the proposed deep-learning based ETC scheme.

Topics & Concepts

Lossy compressionComputer scienceEncryptionArtificial intelligenceComputer visionResidualImage resolutionIterative reconstructionAlgorithmOperating systemAdvanced Image Processing TechniquesDigital Media Forensic DetectionImage and Signal Denoising Methods
A Novel Encryption-Then-Lossy-Compression Scheme of Color Images Using Customized Residual Dense Spatial Network | Litcius