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QDCT-Based Blind Color Image Watermarking With Aid of GWO and DnCNN for Performance Improvement

Ling-Yuan Hsu, Hwai-Tsu Hu

2021IEEE Access21 citationsDOIOpen Access PDF

Abstract

Artificial intelligence (AI) is of great potential for improving the performance of image processing and applications. In this study, we incorporate two AI techniques, namely, the grey wolf optimizer (GWO) and denoising convolutional neural network (DnCNN), within a framework developed based on the quaternion discrete cosine transform (QDCT). Binary embedding is formulated according to the attribute of each QDCT component and the distinctive properties of available modulation schemes. The GWO is responsible for performance optimization, while the DnCNN makes the extracted binary watermark more visually recognizable. Experiment results demonstrate the efficacy of the proposed scheme for resisting a variety of image processing attacks. The proposed scheme outperforms existing ones in terms of the robustness and intelligibility of the retrieved watermarks under the same payload capacity.

Topics & Concepts

Computer scienceDigital watermarkingDiscrete cosine transformArtificial intelligencePayload (computing)Binary numberRobustness (evolution)EmbeddingWatermarkPattern recognition (psychology)Image processingConvolutional neural networkAlgorithmImage (mathematics)MathematicsArithmeticNetwork packetGeneChemistryComputer networkBiochemistryAdvanced Steganography and Watermarking TechniquesDigital Media Forensic DetectionImage and Signal Denoising Methods
QDCT-Based Blind Color Image Watermarking With Aid of GWO and DnCNN for Performance Improvement | Litcius