论文标题
具有典型相关分析的颜色图像的感知强大散列
Perceptual Robust Hashing for Color Images with Canonical Correlation Analysis
论文作者
论文摘要
在本文中,基于环 - 里宾Quadtree和颜色矢量角度提出了一种新颖的感知图像散列图像。首先,原始图像受到归一化和高斯低通滤波的影响,以产生次要图像,该图像分为一系列具有不同半径和相同数量的像素的环形ribbons。然后,纹理和颜色特征都是在本地和全球提取的。 Quadtree分解(QD)应用于环形 - ribbons的亮度值以提取本地纹理特征,并且使用灰度级别的共发生矩阵(GLCM)来提取全局纹理特征。通过颜色矢量角(CVA)提取了环形 - 边界上重要角点的本地颜色特征,并利用颜色低阶矩(CLM)来提取全局颜色特征。最后,通过规范相关分析(CCA)融合了两种类型的特征向量,以在争夺后产生最终哈希。与直接串联相比,CCA特征融合方法提高了分类性能,这更好地反映了两组特征向量之间的总体相关性。接收器操作特征(ROC)曲线表明,我们的方案在稳健性,歧视和安全性方面具有令人满意的性能,可以有效地用于复制检测和内容身份验证。
In this paper, a novel perceptual image hashing scheme for color images is proposed based on ring-ribbon quadtree and color vector angle. First, original image is subjected to normalization and Gaussian low-pass filtering to produce a secondary image, which is divided into a series of ring-ribbons with different radii and the same number of pixels. Then, both textural and color features are extracted locally and globally. Quadtree decomposition (QD) is applied on luminance values of the ring-ribbons to extract local textural features, and the gray level co-occurrence matrix (GLCM) is used to extract global textural features. Local color features of significant corner points on outer boundaries of ring-ribbons are extracted through color vector angles (CVA), and color low-order moments (CLMs) is utilized to extract global color features. Finally, two types of feature vectors are fused via canonical correlation analysis (CCA) to prodcue the final hash after scrambling. Compared with direct concatenation, the CCA feature fusion method improves classification performance, which better reflects overall correlation between two sets of feature vectors. Receiver operating characteristic (ROC) curve shows that our scheme has satisfactory performances with respect to robustness, discrimination and security, which can be effectively used in copy detection and content authentication.