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A New Steganalysis Method Using Densely Connected ConvNets

机译:一种使用密集连接的Cummnets的新的隐分方法

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Steganography is an ancient art of communicating a secret message through an innocent-looking image. On the other hand, steganalysis is the counter process of the steganography, which targets to detect hidden trace within a given image. In this paper, a new approach to steganalysis is presented to learn prominent features and avoid loss of stego signals. The proposed model uses diverse sized filters to capture all useful steganalytic features through a densely connected convolutional network. Moreover, there is no fully connected network in the proposed model, which allows testing any size of images regardless of the image size used for training. To justify the applicability of the proposed scheme, it has been shown experimentally that the proposed scheme outperforms most of the related state-of-the-art methods.
机译:隐写术是一种古老的艺术,可以通过无辜的形象沟通秘密信息。另一方面,塞到分析是隐写术的计数器过程,其靶向在给定图像中检测隐藏的迹线。在本文中,提出了一种新的隐分方法,以学习突出的特征,避免失去Sego信号。该拟议的模型使用各种尺寸的滤波器通过密集连接的卷积网络捕获所有有用的落物特征。此外,所提出的模型中没有完全连接的网络,其允许测试任何大小的图像,而不管用于训练的图像尺寸。为了证明所提出的计划的适用性,已经通过实验显示了拟议的计划优于大多数相关最先进的方法。

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