A learning framework for robust hashing of face images

Kamil Senel, M. K. Mihçak, V. Monga
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引用次数: 2

Abstract

Robust image hashing has been actively researched over the last decade with varied applications in image content authentication and identification under distortions. In the existing literature on robust image hashing, hash algorithms are ignorant of the class of images being hashed. There are however significant application domains such as that of face image hashing where apriori knowledge of the image class as well as permissible distortions can benefit hash algorithm design. In this paper, we present a two stage cascade of dimensionality reduction constructs for face image hashing. The first stage aims to project the face image to a space where geometric distortions manifest approximately as additive noise. For this purpose, we use the non-negative matrix approximations based hash vector developed by Monga et al. which is known to possess excellent geometric attack robustness. In the second stage, we employ oriented principal component analysis (OPCA) based on estimating signal as well as noise statistics in a learning phase and deriving a projection that mitigates the effect of noise. We obtain both experimentally based ROC curves as well as analytical ones via a detection theoretic analysis of the proposed framework. The ROC curves reveal clearly that incorporating such a learning phase greatly reduces error probabilities.
人脸图像鲁棒哈希的学习框架
鲁棒图像哈希在过去十年中得到了积极的研究,在图像内容认证和失真下的识别中得到了不同的应用。在现有的鲁棒图像哈希文献中,哈希算法忽略了被哈希图像的类别。然而,有一些重要的应用领域,如人脸图像哈希,其中图像类的先验知识以及允许的扭曲可以有利于哈希算法的设计。在本文中,我们提出了一个用于人脸图像哈希的两阶段降维结构级联。第一阶段的目的是将人脸图像投影到一个几何扭曲近似为加性噪声的空间。为此,我们使用Monga等人开发的基于非负矩阵近似的哈希向量,该向量具有出色的几何攻击鲁棒性。在第二阶段,我们在学习阶段采用基于估计信号和噪声统计的定向主成分分析(OPCA),并推导出减轻噪声影响的投影。通过对所提出的框架进行检测理论分析,我们得到了基于实验的ROC曲线和分析的ROC曲线。ROC曲线清楚地显示,纳入这样的学习阶段大大降低了错误概率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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