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SG-ResNet: Spatially Adaptive Gabor Residual Networks with Density-Peak Guidance for Joint Image Steganalysis and Payload Location

Zhengliang Lai, Chenyi Wu, Xishun Zhu, Jianhua Wu and Guiqin Duan ()
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Zhengliang Lai: School of Electrical Engineering, Guangdong Songshan Vocational and Technical College, Shaoguan 512000, China
Chenyi Wu: School of Electrical Engineering, Guangdong Songshan Vocational and Technical College, Shaoguan 512000, China
Xishun Zhu: School of Mathematics and Statistics, Hainan Normal University, Haikou 570100, China
Jianhua Wu: School of Information Engineering, Nanchang University, Nanchang 330031, China
Guiqin Duan: School of Computer and Information Engineering, Guangdong Songshan Vocational and Technical College, Shaoguan 512000, China

Mathematics, 2025, vol. 13, issue 9, 1-33

Abstract: Image steganalysis detects hidden information in digital images by identifying statistical anomalies, serving as a forensic tool to reveal potential covert communication. The field of deep learning-based image steganography has relatively scarce effective steganalysis methods, particularly those designed to extract hidden information. This paper introduces an innovative image steganalysis method based on generative adaptive Gabor residual networks with density-peak guidance (SG-ResNet). SG-ResNet employs a dual-stream collaborative architecture to achieve precise detection and reconstruction of steganographic information. The classification subnet utilizes dual-frequency adaptive Gabor convolutional kernels to decouple high-frequency texture and low-frequency contour components in images. It combines a density peak clustering with three quantization and transformation-enhanced convolutional blocks to generate steganographic covariance matrices, enhancing the weak steganographic signals. The reconstruction subnet synchronously constructs multi-scale features, preserves steganographic spatial fingerprints with channel-separated residual spatial rich model and pixel reorganization operators, and achieves sub-pixel-level steganographic localization via iterative optimization mechanism of feedback residual modules. Experimental results obtained with datasets generated by several public steganography algorithms demonstrate that SG-ResNet achieves State-of-the-Art results in terms of detection accuracy, with 0.94, and with a PSNR of 29 between reconstructed and original secret images.

Keywords: Gabor residual network; image steganalysis; spatial rich model; density peaked (search for similar items in EconPapers)
JEL-codes: C (search for similar items in EconPapers)
Date: 2025
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