使用区域划分和直方图处理的加密和数据插入技术

Ryoma Ito, Koksheik Wong, Simying Ong, Kiyoshi Tanaka
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引用次数: 1

摘要

提出了一种可分离的加密和数据插入方法。将输入图像分成2部分,对第一部分进行处理以掩盖感知语义,对第二部分进行处理以隐藏数据。二值图像即要插入的数据,它将输入图像的第二部分进一步划分为两个区域,分别称为“0”和“1”区域。与“0”区域重合的原始图像像素变暗,而与“1”区域重合的像素变亮。采用直方图匹配技术对图像进行调暗和调亮处理。所提出的联合方法是可分离的,插入的二值图像可以直接从被屏蔽图像中提取,也可以从重建图像中提取。所提出的方法也是可交换的,因为无论加密和插入数据的处理顺序如何,都可以获得相同的结果。实验验证了该方法的基本性能。
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Encryption and Data Insertion Technique using Region Division and Histogram Manipulation
A separable encryption and data insertion method is proposed in this paper. The input image is divided into 2 parts, where the first part is manipulated to mask the perceptual semantics, while the second part is processed to hide data. The binary image, which is the data to be inserted, further divides the second part of the input image into 2 regions called the ‘zero’ and ‘one’ regions. Pixels of the original image at position coinciding with the ‘zero’ region are darken, while those coinciding with the ‘one’ region are brightened. The darkening and brightening processes are performed by using histogram matching technique. The proposed joint method is separable, where the inserted binary image can be extracted directly from the masked image or from the reconstructed image. The proposed method is also commutative because the same results is achieved irregardless of the order of processing in encrypting and inserting data. Experiments were carried out to verify the basic performances of the proposed method.
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