A reduced complexity approach for image compression using 1-D & 2-D chaos functions

Madhu Sharma, Swati Jain
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引用次数: 1

Abstract

To match the pace of continuous development and ever expanding internet world, the security and compression issues relevant to the data handling and communication are becoming prominent. The demand of these factors is increasing with the requirement of ease of communication of digital multimedia. Thus the encryption of data plays a vital role in such communication. It can be seen that the major requirements in case of transaction of bulky image information is the encryption of digital image data followed by its compression using an efficient mechanism. The image encryption is not as smooth as text encryption, but somewhat more difficult due to its large size, high correlation among pixels and redundancy. Such factors increase the computation time for image encryption and compression. Thus there is great demand of mechanisms which can perform this activity in reduced computation time [1-5]. In this paper, we have introduced an improvement in computation time of existing image encryption-decryption methods through the usage of chaos functions based logistic map along with Discrete Wavelet Transform method.
一种使用一维和二维混沌函数的图像压缩降低复杂度的方法
为了适应不断发展和不断扩大的互联网世界的步伐,与数据处理和通信相关的安全性和压缩问题日益突出。随着数字多媒体通信便捷性的要求,对这些因素的需求也在不断增加。因此,数据加密在这种通信中起着至关重要的作用。可见,在处理海量图像信息的情况下,主要要求是对数字图像数据进行加密,然后使用有效的机制对其进行压缩。图像加密不像文本加密那么流畅,但由于图像的大小、像素之间的高相关性和冗余性,加密难度更高。这些因素增加了图像加密和压缩的计算时间。因此,对能够在更短的计算时间内执行此活动的机制有很大的需求[1-5]。本文介绍了利用基于混沌函数的逻辑映射和离散小波变换方法来改进现有图像加解密方法的计算时间。
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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