基于统计特征的鲁棒图像哈希拷贝检测

Mayank Srivastava, Jamshed Siddiqui, M. A. Ali
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引用次数: 8

摘要

图像哈希除在图像索引、图像检索等领域的许多最新技术中占有一席之地外,还广泛应用于图像取证领域。图像哈希基本上用于识别原始图像的重复副本。大多数图像哈希算法在获得针对特定图像处理攻击(如旋转)的理想性能方面都有其局限性。本文提出了一种基于图像统计特征的图像哈希算法,该算法对包括旋转在内的几乎所有图像处理攻击都具有鲁棒性。在我们提出的算法中,输入图像通过调整大小,高斯滤波,从RGB图像到YCbCr的颜色空间转换进行归一化,并且仅使用Y分量进行哈希生成。然后对预处理后的图像进行Radon变换,得到二维Radon系数。然后将一维DCT应用于Radon系数以产生柱方向的DCT系数。最后,首先从每列取AC系数,形成逐行向量,用于提取四个统计特征,均值,标准差,峰度和偏度。提取的特征形成最终的特征向量,用于图像识别。已经进行了许多实验,将所提出的技术与最先进的技术进行比较,结果表明,所提出的哈希除了对旋转给出出色的结果外,对正常的数字操作具有鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust image hashing based on statistical features for copy detection
Image hashing is one of the emergent novel approaches used extensively in the field of image forensics apart from finding its place in many of the latest techniques of the area of image indexing, image retrieval etc. Image hashing is basically used to identify the duplicate copies of the original images. Most of the image hashing algorithms has their limitations in getting the desirable performance against a particular image processing attack i.e. rotation. In this paper, we have proposed image hashing technique dominantly based on statistical features of the image which is robust to almost all kind of image processing attacks including rotation. In our proposed algorithm input image is normalized by using resizing, Gaussian filtering, color space conversion from RGB image to YCbCr and only Y component is taken for hash generation. Radon transform is then applied to the preprocessed image to produce 2-D Radon coefficients. 1-D DCT is then applied to the Radon coefficients to produce column-wise DCT coefficients. Lastly first AC coefficient from each column are taken to form the row-wise vector which is used to extract four statistical features, Mean, Standard Deviation, Kurtosis & Skewness. The extracted features form the final feature vector which is used for image identification. Many experiments have conducted to compare the proposed technique with the state-of-the-art techniques and the results shows that proposed hashing is robust to normal digital operations apart from giving excellent result against rotation.
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