Perceptual Image Hashing Using Surffor Feature Extraction and Ensemble Classifier

Padmashri. R, S. Srinivasulu, J. R. Raj, J. J, S. Gowri
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Abstract

Image hash regimes have been widely used for authenticating content, recovery of images and digital forensics. In this article we propose a new algorithm for image haunting (SSL) with the most stable key points and regional features, strong against various manipulation of content conservation, including multiple combinatorial manipulations. In order to extract most stable keypoint, the proposed algorithm combines the Speed Up Robust Features (SURF) with Saliency detection. The keyboards and characteristics of the local area are then combined in a hash vector. There is also a sperate secret key that is randomly given for the hash vector to prevent an attacker from shaping the image and the new hash value. The proposed hacking algorithm shows that similar or initial images, which have been individually manipulated, combined and even multiple manipulated contents, can be visently identified by experimental result. The probability of collision between hacks of various images is almost nil. Furthermore, the key-dependent security assessment shows the proposed regime safe to allow an attacker without knowing the secret key not to forge or estimate the right havoc value.
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基于表面的感知图像哈希特征提取与集成分类器
图像哈希机制已广泛用于内容认证、图像恢复和数字取证。本文提出了一种新的图像困扰算法,该算法具有最稳定的关键点和区域特征,对各种内容保护操作(包括多种组合操作)具有较强的抵抗能力。为了提取最稳定的关键点,该算法将加速鲁棒特征(SURF)与显著性检测相结合。然后将键盘和局部区域的特征组合在哈希向量中。还有一个为哈希向量随机给定的私密密钥,以防止攻击者对图像和新的哈希值进行整形。实验结果表明,该算法可以很好地识别经过单独、组合甚至多个操作内容的相似或初始图像。不同图像的黑客之间碰撞的概率几乎为零。此外,依赖于密钥的安全评估表明,所提议的制度是安全的,允许攻击者在不知道秘钥的情况下不伪造或估计正确的破坏值。
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