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Steganalysis of convolutional neural network based on neural architecture search

机译:基于神经架构搜索的卷积神经网络的麻解分析

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Recent studies show that the performance of deep convolutional neural network (CNN) applied to steganalysis is better than that of traditional methods. However, the existing network structure is still caused by artificial design, which may not be the optimal training network. This paper describes a deep residual network based on a neural architecture search (NAS) algorithm, to minimize the artificial design of network elements to achieve better detection results. In this algorithm, we add a long-span residual structure to the traditional layer of the residual structure, which can better capture the complex statistical information of digital images and actively enhance the signals from secret messages, which is suitable for distinguishing cover and stego images. Two of the most advanced steganographic algorithms, WOW (wavelet obtained weights) and SUNIWARD (spatial universal wavelet relative distortion), are used to evaluate the effectiveness of this model in the spatial domain. Compared with a recently proposed method based on CNN, our model achieves excellent performance on all tested algorithms for various payloads
机译:最近的研究表明,应用于塞到分析的深度卷积神经网络(CNN)的性能优于传统方法。然而,现有的网络结构仍由人工设计引起的,这可能不是最佳训练网络。本文介绍了基于神经结构搜索(NAS)算法的深度剩余网络,以最小化网络元件的人工设计,以实现更好的检测结果。在该算法中,我们向传统的残余结构层添加了长期的残余结构,这可以更好地捕获数字图像的复杂统计信息,并主动增强来自秘密消息的信号,这适用于区分封面和SEGO图像。两个最先进的书签算法,魔兽(小波获得的权重)和阳光(空间通用小波相对失真)用于评估该模型在空间域中的有效性。与基于CNN的最近提出的方法相比,我们的模型在各种有效载荷的所有测试算法上实现了出色的性能

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