Title :
A hybrid approach for content based image authentication
Author :
Jinse Shin;Christoph Ruland
Author_Institution :
Chair for Data Communications Systems, University of Siegen, Hoelderlinstr. 3, Siegen, Germany
Abstract :
Perceptual image hashing has received an increase dattention as one of the most important components for content based image authentication in recent years. Content based image authentication using perceptual image hashing is mainly classified into four different categories according to the feature extraction scheme. However, all the recently published literature that belongs to the individual category has its own strengths and weaknesses related to the feature extraction scheme. In this regard, this paper proposes a hybrid approach to improve the performance by combining two different categories: low-level image representation and coarse image representation. The proposed method employs a well-known local feature descriptor, the so-called Histogram of Oriented Gradients (HOG), as the feature extraction scheme in conjunction with Image Intensity Random Transformation (IIRT), Successive Mean Quantization Transform (SMQT), and bit-level permutation to construct a secure and robust hash value. To enhance the proposed method, a Key Derivation Function (KDF) and Error Correction Code (ECC) are applied to generate a stable subkey based on the coarse image representation. The derived subkey is utilized as a random seed in IIRT and HOG feature computation. Additionally, the experimental results are presented and compared with two existing algorithms in terms of robustness, discriminability, and security.
Keywords :
"Feature extraction","Image representation","Authentication","Silicon","Robustness","Discrete cosine transforms"
Conference_Titel :
Security and Cryptography (SECRYPT), 2014 11th International Conference on