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首页> 外文期刊>The Journal of Engineering >Application of quantisation-based deep-learning model compression in JPEG image steganalysis
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Application of quantisation-based deep-learning model compression in JPEG image steganalysis

机译:基于量化的深度学习模型压缩在JPEG图像隐写分析中的应用

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Steganography can hide secret information in an innocent cover medium. Its opponent is steganalysis, which is used to discriminate whether a suspicious carrier contains a hidden message or not. With the rapid development of deep-learning frameworks, deep-learning-based steganalytic models have hold the dominant position in the field of steganalysis. In recent years, some scholars have successfully utilised model compression methods in the field of image classification. However, as far as the authors know, no prior works are devoted to the application of model compression methods in the field of deep-learning-based steganalysis. In this study, the authors explore the effect of two quantisation schemes, namely 8-bit calculation and floating-point calculation, on the performance of XuNet, a state-of-the-art deep-learning steganalytic model. The experimental results show that the two deep-learning model quantisation schemes are applicable to steganalysis. It is even possible to compress the network size while retaining satisfactory performance.
机译:隐秘术可以将秘密信息隐藏在无辜的掩盖媒体中。它的对手是隐写分析,用于区分可疑载体是否包含隐藏消息。随着深度学习框架的快速发展,基于深度学习的隐写分析模型在隐写分析领域占据了主导地位。近年来,一些学者在图像分类领域成功地利用了模型压缩方法。然而,据作者所知,在基于深度学习的隐写分析领域,没有任何先前的工作致力于模型压缩方法的应用。在这项研究中,作者探索了8位计算和浮点计算这两种量化方案对先进的深度学习隐写分析模型XuNet的性能的影响。实验结果表明,两种深度学习模型量化方案均适用于隐写分析。甚至有可能在保持令人满意的性能的同时压缩网络大小。

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