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首页> 外文期刊>IEEE transactions on industrial informatics >DWFCAT: Dual Watermarking Framework for Industrial Image Authentication and Tamper Localization
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DWFCAT: Dual Watermarking Framework for Industrial Image Authentication and Tamper Localization

机译:DWFCAT:用于工业图像认证和篡改本地化的双水印框架

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摘要

The image data received through various sensors are of significant importance in Industry 4.0. Unfortunately, these data are highly vulnerable to various malicious attacks during its transit to the destination. Although the use of pervasive edge computing (PEC) with the Internet of Things (IoT) has solved various issues, such as latency, proximity, and real-time processing, but the security and authentication of data between the nodes is still a significant concern in PEC-based industrial-IoT scenarios. In this article, we present "DWFCAT," a dual watermarking framework for content authentication and tamper localization for industrial images. The robust and fragile watermarks along with overhead bits related to the cover image for tamper localization are embedded in different planes of the cover image. We have used discrete cosine transform coefficients and exploited their energy compaction property for robust watermark embedding. We make use of a four-point neighborhood to predict the value of a predefined pixel and use it for embedding the fragile watermark bits in the spatial domain. Chaotic and deoxyribonucleic acid encryption is used to encrypt the robust watermark before embedding to enhance its security. The results indicate that DWFCAT can withstand a range of hybrid signal processing and geometric attacks, such as Gaussian noise, salt and pepper, joint photographic experts group (JPEG) compression, rotation, low-pass filtering, resizing, cropping, sharpening, and histogram equalization. The experimental results prove that the DWFCAT is highly efficient compared with the various state-of-the-art approaches for authentication and tamper localization of industrial images.
机译:通过各种传感器接收的图像数据在工业4.0中具有重要意义。不幸的是,这些数据在其到目的地的运输过程中非常容易受到各种恶意攻击。尽管使用普遍的边缘计算(PEC)与物联网(物联网)解决了各种问题,例如延迟,接近和实时处理,但节点之间的数据的安全性和认证仍然是一个重要问题在基于PEC的工业IOT场景中。在本文中,我们展示了“DWFCAT”,是工业图像的内容认证和篡改本地化的双水印框架。稳健和脆弱的水印以及与用于篡改定位的盖子图像相关的架空位嵌入在覆盖图像的不同平面中。我们使用了离散余弦变换系数,并利用了它们的能量压实属性,以实现强大的水印嵌入。我们利用四点邻域来预测预定义像素的值,并使用它来嵌入空间域中的脆弱水印位。混沌和脱氧核糖核酸加密用于加密强大的水印,然后嵌入之前加强其安全性。结果表明,DWFCAT可以承受一系列混合信号处理和几何攻击,例如高斯噪声,盐和辣椒,联合摄影专家组(JPEG)压缩,旋转,低通滤波,调整大小,裁剪,锐化和直方图均衡。实验结果证明,与工业图像的各种最先进的方法相比,DWFCAT比较高效。

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