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Coverless real-time image information hiding based on image block matching and dense convolutional network

机译:基于图像块匹配和密集卷积网络的无覆盖实时图像信息隐藏

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摘要

Information security has become a key issue of public concern recently. In order to radically resist the decryption and analysis in the field of image information hiding and significantly improve the security of the secret information, a novel coverless information hiding approach based on deep learning is proposed in this paper. Deep learning can select the appropriate carrier according to requirements to achieve real-time image data hiding and the high-level semantic features extracted by CNN are more accurate than the low-level features. This method does not need to employ the designated image for embedding the secret data but transfer a set of real-time stego-images which share one or several visually similar blocks with the given secret image. In this approach, a group of real-time images searched online are segmented according to specific requirements. Then, the DenseNet is used to extract the high-level semantic features of each similar block. At the same time, a robust hash sequence with feature sequence, DC and location is generated by DCT. The inverted index structure based on the hash sequence is constructed to attain real-time image matching efficiently. At the sending end, the stego-images are matched and sent through feature retrieval. At the receiving end, the secret image can be recovered by extracting similar blocks through the received stego-images and stitching the image blocks according to the location information. Experimental results demonstrate that the proposed method without any modification traces provides better robustness and has higher retrieval accuracy and capacity when compared with some existing coverless image information hiding.
机译:信息安全最近已成为公众关注的关键问题。为了从根本上抵制图像信息隐藏领域的解密和分析,并显着提高秘密信息的安全性,提出了一种基于深度学习的新型无覆盖信息隐藏方法。深度学习可以根据需要选择合适的载体,以实现实时图像数据隐藏,并且CNN提取的高级语义特征比低级特征更准确。该方法不需要使用指定的图像来嵌入秘密数据,而是传输一组实时隐秘图像,这些图像与给定的秘密图像共享一个或几个视觉上相似的块。通过这种方法,可以根据特定要求对在线搜索的一组实时图像进行分割。然后,使用DenseNet提取每个相似块的高级语义特征。同时,DCT生成具有特征序列,DC和位置的鲁棒哈希序列。构建基于哈希序列的倒排索引结构,以有效地实现实时图像匹配。在发送端,隐秘图像经过匹配并通过特征检索发送。在接收端,可以通过从接收到的隐秘图像中提取相似的块并根据位置信息拼接图像块来恢复秘密图像。实验结果表明,与现有的一些无覆盖图像信息隐藏方法相比,该方法无任何修改痕迹,具有较好的鲁棒性,具有较高的检索精度和容量。

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