Self-sanitization of digital images using steganography

Tayana Morkel
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引用次数: 1

Abstract

Sanitization of an image is a process where certain areas of an image are removed to keep the contents safe from unauthorised viewers. Image sanitization is often required by authorities, for example law enforcement or in legal cases, when the image contains sensitive material that should not be shown to the general public. This paper proposes a system for the self-sanitization of a digital image using information hiding, specifically image steganography, techniques to hide part of the image within the image itself. The proposed self-sanitization system allows for the removal of a specific part of the image and then uses Least Significant Bit (LSB) steganography to embed the sanitized part of the image within the rest of the image, making it unnecessary to store the sanitized and unsanitized versions of the image separately. The self-sanitization system includes a method for reducing the size of the embedded information in an attempt to make the information more difficult to detect. Experimental results show that the proposed self-sanitization system is undetectable to visual and statistical analysis techniques.
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使用隐写术的数字图像的自消毒
图像的消毒是一个过程,其中图像的某些区域被删除,以保持内容的安全,未经授权的观众。当图像包含不应向公众展示的敏感材料时,当局(例如执法部门或法律案件)通常要求对图像进行消毒。本文提出了一种利用信息隐藏,特别是图像隐写技术,在图像本身中隐藏部分图像的数字图像的自消毒系统。所提出的自消毒系统允许删除图像的特定部分,然后使用最低有效位(LSB)隐写术将图像的消毒部分嵌入到图像的其余部分中,从而无需分别存储图像的消毒和未消毒版本。自消毒系统包括一种减小所嵌入信息的大小以使所述信息更难以检测的方法。实验结果表明,所提出的自消毒系统是视觉和统计分析技术无法检测到的。
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