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Structural Feature-Based Image Hashing and Similarity Metric for Tampering Detection

机译:基于结构特征的图像哈希和相似度度量用于篡改检测

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摘要

Structural image features are exploited to construct perceptual image hashes in this work. The image is first preprocessed and divided into overlapped blocks. Correlation between each image block and a reference pattern is calculated. The intermediate hash is obtained from the correlation coefficients. These coefficients are finally mapped to the interval [0,100], and scrambled to generate the hash sequence. A key component of the hashing method is a specially defined similarity metric to measure the "distance" between hashes. This similarity metric is sensitive to visually unacceptable alterations in small regions of the image, enabling the detection of small area tampering in the image. The hash is robust against content-preserving processing such as JPEG compression, moderate noise contamination, watermark embedding, re-scaling, brightness and contrast adjustment, and low-pass filtering. It has very low collision probability. Experiments are conducted to show performance of the proposed method.
机译:在这项工作中,利用结构化图像特征来构造感知图像哈希。首先对图像进行预处理,然后将其分成重叠的块。计算每个图像块和参考图案之间的相关性。从相关系数获得中间哈希。这些系数最终映射到间隔[0,100],并加扰以生成哈希序列。哈希方法的关键组成部分是专门定义的相似性度量,用于度量哈希之间的“距离”。该相似性度量对图像的小区域中视觉上不可接受的更改敏感,从而能够检测图像中的小区域篡改。哈希对于内容保留处理(例如JPEG压缩,中等噪声污染,水印嵌入,重新缩放,亮度和对比度调整以及低通滤波)具有强大的抵抗力。它具有极低的碰撞概率。实验表明该方法的性能。

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