Rewritable Data Embedding in Image based on Improved Coefficient Recovery

A. Sii, Simying Ong, M. Wee, Koksheik Wong
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Abstract

Nowadays, most images are stored and transmitted in certain compressed forms based on some coding standards. Usually, the image is transformed, e.g., by discrete cosine transformation, and hence coefficient makes up a large proportion of the compressed bit stream. However, these coefficients might be corrupted or completely lost due to transmission errors or damages incurred on the storage device. Therefore, in this work, we aim to improve a conventional coefficient recovery method. Specifically, instead of using the Otsu’s method adopted in the conventional method, an adaptive segmentation method is utilized to split the image into background and foreground regions, forming non-overlapping patches. Missing coefficients in these non-overlapping patches are recovered independently. In addition, a rewritable data embedding method is put forward by judiciously selecting patches to embed data. Experiments are carried to verify the basic performance of the proposed methods. In the best-case scenario, an improvement of 31.32% in terms of CPU time is observed, while up to 7149 bits of external data can be embedded into the image.
基于改进系数恢复的图像可重写数据嵌入
目前,大多数图像都是按照一定的编码标准以一定的压缩形式存储和传输的。通常对图像进行变换,如离散余弦变换,因此系数在压缩比特流中占很大比例。但是,由于传输错误或存储设备损坏,这些系数可能会被损坏或完全丢失。因此,在这项工作中,我们的目标是改进传统的系数恢复方法。具体而言,采用自适应分割方法将图像分割为背景和前景区域,形成不重叠的小块,而不是传统方法中采用的Otsu方法。在这些不重叠的patch中,缺失系数被独立地恢复。此外,提出了一种可重写的数据嵌入方法,即合理选择嵌入数据的补丁。实验验证了所提方法的基本性能。在最好的情况下,可以观察到CPU时间方面的31.32%的改进,同时可以将多达7149位的外部数据嵌入到图像中。
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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