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Biometric watermarks based on face recognition methods for authentication of digital images

机译:基于人脸识别方法的生物特征水印用于数字图像认证

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Because making digital images secure runs into the substantial challenge of owner authentication, many security schemes based on cryptography, steganography and watermarking technology include biometric recognition methods. To follow on these studies, this paper describes a combination of facial images with watermarking technology to automatically authenticate digital images owners/users. In the proposed methodology, biometric face recognition methods such as principal component analysis and eigenfeature regularization and extraction produce vectorial representations of facial images. These vectors are used as copyright watermarks, in a few common watermarking schemes, and are tested for identification purposes after they are extracted. Initially, watermarking algorithms are studied with some arbitrary cover image, and also the most robust algorithm is tested for different cover images of particular subjects. The strength of this paper is finding relationships between the original and extracted biometric data using neural networks instead of the most common, simple measures such as correlation coefficients or distance metrics. The NN subject identification is performed directly, as there is no need to reconstruct facial images after the watermarks are extracted, compute templates for particular subjects, or seek a suitable distance metric. What is more, the presented study includes a performance comparison of two machine learning methods, frequently used for face recognition, and of a few popular watermarking algorithms. Very promising identification results were obtained in many considered experiments, even those involving attacks on watermarked images. Copyright ? 2014 John Wiley & Sons, Ltd. In this paper, we propose to combine biometric recognition methods with watermarking technology to perform authentication of digital images. The facial images are processed to construct face feature vectors that as copyright watermarks undergo a few watermarking schemes. The system performance is evaluated by subject identification accuracy obtained using neural networks.
机译:由于使数字图像安全成为所有者认证的重大挑战,因此许多基于密码术,隐写术和水印技术的安全方案都包括生物识别方法。为了进行这些研究,本文介绍了将面部图像与水印技术结合使用以自动认证数字图像所有者/用户的方法。在所提出的方法中,生物特征面部识别方法(例如主成分分析,特征特征正则化和提取)可产生面部图像的矢量表示。这些向量在一些常见的水印方案中用作版权水印,并在提取后进行测试以进行识别。最初,对带有任意覆盖图像的水印算法进行了研究,并且针对特定主题的不同覆盖图像测试了最鲁棒的算法。本文的优势是使用神经网络而不是最常见的简单度量(例如相关系数或距离度量)来查找原始生物特征数据和提取的生物特征数据之间的关系。 NN主题识别直接执行,因为在提取水印后无需重建面部图像,无需为特定主题计算模板或寻找合适的距离度量。此外,本研究还包括两种经常用于面部识别的机器学习方法和一些流行的水印算法的性能比较。在许多经过考虑的实验中获得了非常有希望的识别结果,即使是那些涉及对水印图像的攻击的结果。版权? 2014年John Wiley&Sons,Ltd.在本文中,我们建议将生物特征识别方法与水印技术相结合,以对数字图像进行身份验证。面部图像被处理以构造面部特征向量,随着版权水印,面部特征向量经历一些水印方案。系统性能通过使用神经网络获得的对象识别准确性进行评估。

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