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Generative Adversarial Network based Steganography with different Color Spaces

机译:基于生成的对抗网络基于不同颜色空间的隐写术

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Traditional steganographic uses an approach where various steps of a steganographic algorithm are devised by human experts. This process can be automated with Generative Adversarial Networks. The use of Generative Adversarial Networks (GAN) in the field of steganography helps in generating suitable and secure covers for steganography with no need for human based algorithms. The network learns and evolves to replace the role played by a steganographic algorithm in generating robust steganalyzers without human intervention. All the GAN based steganographic models use RGB images for hiding the secret data. In this work, the impact of various color spaces on GAN based steganography application is explored. Steganographic images in different color formats such as RGB, YCrCb, YIQ, YUV, CIEXYZ, YDbDr, HED and HSV are generated using DCGAN based model to study the importance of color spaces in steganography. The results of the experimentation on CelebA dataset show that the color spaces play an important role in GAN based steganography. The error rate and the message extraction accuracy of a model vary significantly with different color spaces. The experimental analysis depicts that color spaces such as HED, YUV and YCrCb perform better than RGB and other color spaces in terms of distortion, extraction accuracy and convergence for the same number of epochs.
机译:传统的书签使用一种方法,其中由人类专家设计了隐写算法的各种步骤。该过程可以用生成的对抗性网络自动化。在隐写术领域中使用生成的对抗性网络(GaN)有助于为隐写术产生合适的和固定盖,不需要人类的基于人的算法。网络学习和发展以替换通过人为干预的强大落物仪在生成强大的落物仪中扮演的角色。基于GaN的隐写模型使用RGB图像来隐藏秘密数据。在这项工作中,探讨了各种颜色空间对基于GaN的隐写应用程序的影响。使用基于DCGAN的模型产生不同颜色格式的隐写图像,如RGB,YCRCB,YIQ,YUV,CIExYZ,YDBDR,HED和HSV,以研究隐写凝视中的颜色空间的重要性。 Celeba数据集的实验结果表明,颜色空间在基于GaN的隐写术中发挥着重要作用。模型的错误率和消息提取精度随不同的颜色空间而变化显着。实验分析描绘了诸如静脉,YUV和YCRCB的颜色空间在变形,提取精度和相同数量的时期的收敛方面比RGB和其他颜色空间更好。

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