Ayaluri Mallikarjuna Reddy, K Sudheer Reddy, Konda Srinivasa Reddy, Chidirala Sudharshan Reddy
Computer Science and Engineering, Anurag University, Hyderabad, India.
Information Technology, Anurag University, Hyderabad, India.
PeerJ Comput Sci. 2021 Feb 16;7:e356. doi: 10.7717/peerj-cs.356. eCollection 2021.
Steganalysis is the process of analyzing and predicting the presence of hidden information in images. Steganalysis would be most useful to predict whether the received images contain useful information. However, it is more difficult to predict the hidden information in images which is computationally difficult. In the existing research method, this is resolved by introducing the deep learning approach which attempts to perform steganalysis tasks in effectively. However, this research method does not concentrate the noises present in the images. It might increase the computational overhead where the error cost adjustment would require more iteration. This is resolved in the proposed research technique by introducing the novel research method called Non-Gaussian Noise Aware Auto Encoder Convolutional Neural Network (NGN-AEDNN). Classification technique provides a more flexible way for steganalysis where the multiple features present in the environment would lead to an inaccurate prediction rate. Here, learning accuracy is improved by introducing noise removal techniques before performing a learning task. Non-Gaussian Noise Removal technique is utilized to remove the noises before learning. Also, Gaussian noise removal is applied at every iteration of the neural network to adjust the error rate without the involvement of noisy features. This proposed work can ensure efficient steganalysis by accurate learning task. Matlab has been employed to implement the method by performing simulations from which it is proved that the proposed research technique NGN-AEDNN can ensure the efficient steganalysis outcome with the reduced computational overhead when compared with the existing methods.
隐写分析是分析和预测图像中隐藏信息存在的过程。隐写分析对于预测接收到的图像是否包含有用信息最为有用。然而,预测图像中的隐藏信息更加困难,因为这在计算上很困难。在现有的研究方法中,通过引入深度学习方法来解决这个问题,该方法试图有效地执行隐写分析任务。然而,这种研究方法没有关注图像中存在的噪声。这可能会增加计算开销,因为误差成本调整需要更多的迭代。在所提出的研究技术中,通过引入一种名为非高斯噪声感知自动编码器卷积神经网络(NGN-AEDNN)的新颖研究方法来解决这个问题。分类技术为隐写分析提供了一种更灵活的方式,其中环境中存在的多个特征可能导致预测准确率不准确。在这里,通过在执行学习任务之前引入噪声去除技术来提高学习准确率。在学习之前利用非高斯噪声去除技术去除噪声。此外,在神经网络的每次迭代中应用高斯噪声去除来调整错误率,而不涉及噪声特征。这项提议的工作可以通过准确的学习任务确保高效的隐写分析。已经使用Matlab通过执行模拟来实现该方法,结果证明与现有方法相比,所提出的研究技术NGN-AEDNN可以以减少的计算开销确保高效的隐写分析结果。