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A video coverless information hiding algorithm based on semantic segmentation

机译:基于语义分割的视频覆盖信息隐藏算法

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Due to the fact that coverless information hiding can effectively resist the detection of steganalysis tools, it has attracted more attention in the field of information hiding. At present, most coverless information hiding schemes select text and image as transmission carriers, while there are few studies on emerging popular media such as video, which has more abundant contents. Taking the natural video as the carrier is more secure and can avoid the attention of attackers. In this paper, we propose a coverless video steganography algorithm based on semantic segmentation. Specifically, to establish the mapping relationship between secret information and video files effectively, this paper introduces the deep learning based on semantic segmentation network to calculate the statistical histogram of semantic information. To quickly index the sender’s secret message to the corresponding video frame, we build a three-digit index structure. The receiver can extract the valid video frame from the three-digit index information and restore the secret information. On the one hand, the neural network is trained through the original image and the noisy image in this scheme; therefore, it can not only effectively resist the interference of noises, but also accurately extract the robust deep features of the image. The frames of video generate the robust mapping to the secret information after the semantic information statistics. On the other hand, semantic segmentation belongs to pixel-level segmentation, which has high requirements for network parameters, so it is difficult for attackers to decrypt and recover secret information. Since this scheme does not modify the primitiveness of video data, it can effectively resist steganalysis tools. The experimental results and analysis show that the video coverless information hiding scheme has a large capacity and a certain resistance to noise attack.
机译:由于隐藏的信息隐藏可以有效地抵抗塞析作工具的检测,因此它在藏身之中引起了更多关注。目前,大多数无关的信息隐藏方案选择文本和图像作为传输载体,而仍有关于视频的新兴流行媒体(如视频)的内容较少。以自然视频为载体更加安全,可以避免攻击者的注意力。在本文中,我们提出了一种基于语义分割的无覆型视频隐写算法。具体地,为了有效地建立秘密信息和视频文件之间的映射关系,本文介绍了基于语义分割网络的深度学习,以计算语义信息的统计直方图。要将发件人的秘密消息快速索引到相应的视频帧,我们构建了一个三位数的索引结构。接收器可以从三位数索引信息中提取有效的视频帧并恢复秘密信息。一方面,神经网络通过该方案中的原始图像和嘈杂图像培训;因此,它不仅可以有效地抵抗噪声的干扰,还可以精确提取图像的强大深度特征。在语义信息统计数据之后,视频帧生成到秘密信息的强大映射。另一方面,语义分割属于像素级分割,对网络参数具有高要求,因此攻击者难以解密和恢复秘密信息。由于该方案不修改视频数据的原始性,因此它可以有效地抵抗铲骨分析工具。实验结果和分析表明,视频隐藏信息隐藏方案具有大容量和一定的抗噪声攻击抵抗力。

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