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Neural network based feature point detection for image morphing

机译:基于神经网络的图像变形特征点检测

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In recent years, information security becomes more necessary than it used to be. Steganography is one of the effective mechanisms to protect ones privacy and secrets. Recently, we proposed a morphing based steganography, in which a morphed image is used as the cover image, the encryption key, as well as the stego-key. A key point to ensure the security is the “naturalness” of the morphed images. To obtain natural images through morphing, we may manually specify the feature points in the given reference images. This, however, is a very tedious task in practice. To increase the efficiency, we study in this paper automatic feature point detection based on neural networks (NNs). In this method, the difference between a sub-image A and a sub-image B is used as the input of the NN, and the output is the estimated difference between the coordinates of the centers of A and B. Thus, if B is centered by one of the feature points, and the NN is properly designed, we can obtain an estimated coordinate of the corresponding feature point directly from the NN output, given A-B as the input. This paper introduces the process for obtaining the training data and the teacher signals, and provides some initial experimental results to verify the proposed approach.
机译:近年来,信息安全变得比以往更加必要。隐秘术是保护个人隐私和秘密的有效机制之一。最近,我们提出了一种基于变形的隐写技术,其中将变形图像用作封面图像,加密密钥以及隐秘密钥。确保安全性的关键是变形图像的“自然性”。为了通过变形获得自然图像,我们可以在给定的参考图像中手动指定特征点。但是,这实际上是一个非常繁琐的任务。为了提高效率,本文研究了基于神经网络(NN)的自动特征点检测。在该方法中,将子图像A和子图像B之间的差异用作NN的输入,并且输出是A和B的中心坐标之间的估计差异。因此,如果B为以特征点之一为中心,并适当地设计了NN,我们可以直接从NN输出中获得相应特征点的估计坐标,并以AB为输入。本文介绍了获取训练数据和教师信号的过程,并提供了一些初步的实验结果来验证所提出的方法。

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