基于模型压缩的图像隐匿分析

Siyuan Huang, Minqing Zhang, Xiong Zhang, Chao Jiang, Yongjun Kong, Fuqiang Di, Yan Ke
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引用次数: 0

摘要

近年来,深度学习技术发展迅速,基于深度学习的隐写术和隐分析技术也取得了丰硕成果。过去几年,基于深度学习的隐分析器结构过度膨胀,导致了巨大的计算和存储成本。本文提出了基于模型压缩的图像隐写分析方法,并将模型压缩方法应用于图像隐写分析,以减少现有基于深度学习的大规模超参数隐写分析器的网络基础设施。我们在BOSSBase+BOWS2数据集上进行了大量实验。从实验中可以看出,与原有的隐写分析模型相比,我们提出的模型结构能以更少的参数和浮点运算实现更高的性能。该模型具有更好的可移植性和可扩展性。
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Image steganalysis based on model compression
Deep learning technology has developed rapidly in recent years, and deep learning-based steganography and steganalysis techniques have also achieved fruitful results. In the past few years, the over-expanded structure of steganalyzers based on deep learning has led to huge computational and storage costs. In this article, we propose image steganalysis based on model compression, and apply the model compression method to image steganalysis to reduce the network infrastructure of the existing large-scale over-parameter steganalyzer based on deep learning. We conducted extensive experiments on the BOSSBase+BOWS2 dataset. As can be seen from the experiment, compared with the original steganalysis model, the model structure we proposed can achieve performance with fewer parameters and floating-point operations. This model has better portability and scalability.
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