基于专家知识的扫描文档自动感兴趣区域(ROI)选择用于数字图像加密

A. Wong, W. Bishop
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引用次数: 6

摘要

传统的面向图像的加密技术缺乏特定于内容的安全特性(如在文档的一部分中隐藏机密信息)所需的灵活性。特定于内容的安全性对于以数字图像的形式存储敏感文档的数字档案系统尤为重要。为了满足现代数字文档管理系统的需要,提出了一种利用多级感兴趣区域(ROI)特权进行数字文档加密的新型图像加密方案。该图像加密方案需要选择感兴趣的区域进行加密。手动选择区域的过程可能很耗时。本文提出了一种自动感兴趣区域选择算法,该算法利用专家知识学习系统在扫描文档图像中选择感兴趣区域,以便在加密过程中最大限度地减少人类交互时间。实验结果表明,该算法具有较高的精度和显著的节省时间的优点。
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Expert Knowledge Based Automatic Regions-of-Interest (ROI) Selection in Scanned Documents for Digital Image Encryption
Conventional image-oriented cryptographic techniques lack the flexibility needed for content-specific security features such as the concealment of confidential information within a portion of a document. Content-specific security is particularly important for digital archival systems that store sensitive documents in the form of digital images. Recently, a novel image encryption scheme utilizing multiple levels of regions-of-interest (ROI) privileges for digital document encryption was developed to address the needs of modern digital document management systems. This image encryption scheme requires the selection of regions-ofinterest for encryption. The process of manually selecting regions can be time-consuming. This paper presents an automatic, regions-of-interest selection algorithm that utilizes an expert knowledge learning system to select regions of interest in a scanned document image for the purpose of minimizing human interaction time during the encryption process. Experimental results show that a high level of accuracy and significant timesaving benefits can be achieved using the proposed algorithm.
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