利用深度隐写术进行可取消的人脸识别

Koichi Ito;Takashi Kozu;Hiroya Kawai;Goki Hanawa;Takafumi Aoki
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引用次数: 0

摘要

在生物识别技术中,生物识别样本的安全传输和存储对于保护数据主体的隐私和安全非常重要。在保护生物识别样本的同时进行身份验证的方法之一是可取消生物识别技术,它对特征进行转换,并使用转换后的特征进行身份验证。在可取消生物统计方法中,有人提出了基于隐写术的方法,即将秘密信息嵌入另一种信息中以隐藏其存在。在本文中,我们提出了基于深度隐写术的可取消生物识别技术,用于人脸识别。我们将人脸图像或人脸特征嵌入封面图像,生成与封面图像外观相同的隐去图像。通过使用专用的人脸特征提取器,我们可以在不还原嵌入的人脸图像或隐图像中的人脸特征的情况下进行人脸识别。通过使用公共人脸图像数据集进行性能和安全性评估实验,我们证明了与传统的基于隐写术的方法相比,所提出的方法非常有效。此外,我们还介绍了所提方法的潜在应用之一,即通过使用带有一次性密码的二维码作为封面图像来提高人脸识别的安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cancelable Face Recognition Using Deep Steganography
In biometrics, the secure transfer and storage of biometric samples are important for protecting the privacy and security of the data subject. One of the methods for authentication while protecting biometric samples is cancelable biometrics, which performs transformation of features and uses the transformed features for authentication. Among the methods of cancelable biometrics, steganography-based approaches have been proposed, in which secret information is embedded in another to hide its existence. In this paper, we propose cancelable biometrics based on deep steganography for face recognition. We embed a face image or its face features into a cover image to generate a stego image with the same appearance as the cover image. By using a dedicated face feature extractor, we can perform face recognition without restoring the embedded face image or face features from the stego image. We demonstrate the effectiveness of the proposed method compared to conventional steganography-based methods through performance and security evaluation experiments using public face image datasets. In addition, we present one of the potential applications of the proposed method to improve the security of face recognition by using a QR code with a one-time password for the cover image.
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CiteScore
10.90
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