基于局部特征优化的空间域图像隐藏数据检测

Jean De La Croix Ntivuguruzwa, T. Ahmad
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引用次数: 4

摘要

技术进步使得机器学习算法对于解决复杂问题至关重要。深度学习是设计卷积神经网络(cnn)的一种机器学习范式,在检测机密数据(称为隐写分析)方面取得了很好的性能。然而,现有的隐写分析cnn并没有达到最佳的检测精度和网络稳定性。在本研究中,我们提出了一种在CNN内部通过优化空间域图像特征提取阶段的局部特征来提高秘密数据检测精度的新方法。性能评估使用打破我们的隐写系统基础(BOSSBase)数据集,具有两种标准的自适应隐写算法,采用每像素0.2和0.4比特的低有效载荷容量。实验结果在准确性和网络稳定性方面优于先前发表的研究成果。检测精度提高了2.1% ~ 3.6%。
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Toward Hidden Data Detection via Local Features Optimization in Spatial Domain Images
Technology advancements made machine learning algorithms crucial to solving complex problems. Deep learning, a machine learning paradigm to design convolutional neural networks (CNNs), achieves promising performance in detecting confidential data, known as steganalysis. However, the existing steganalysis CNNs have not achieved optimal performance detecting accuracy and network stability. In this research, we propose a new approach within CNN to improve the secret data detection accuracy by optimizing the local features in the feature extraction stage of the spatial domain images. The performance is evaluated using the Break Our Steganographic System Base (BOSSBase) dataset with two standard adaptive steganography algorithms employing low payload capacities of 0.2 and 0.4 bits per pixel. The experimental results outperform the results of the previously published works in accuracy and network stability. The detection accuracy is improved in a range between 2.1% to 3.6%.
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