Efficient Fractal Image Coding using Fast Fourier Transform

S. B. Dhok, R. Deshmukh, A. Keskar
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引用次数: 8

Abstract

The fractal coding is a novel technique for image compression. Though the technique has many attractive features, the large encoding time makes it unsuitable for real time applications. In this paper, an efficient algorithm for fractal encoding which operates on entire domain image instead of overlapping domain blocks is presented.The algorithm drastically reduces the encoding time as compared to classical full search method. The reduction in encoding time is mainly due to use of modified crosscorrelation based similarity measure. The implemented algorithm employs exhaustive search of domain blocks and their isometry transformations to investigate their similarity with every range block. The application of Fast Fourier Transform in similarity measure calculation speeds up the encoding process. The proposed eight isometry transformations of a domain block exploit the properties of Discrete Fourier Transform to minimize the number of Fast Fourier Transform calculations. The experimental studies on the proposed algorithm demonstrate that the encoding time is reduced drastically with average speedup factor of 538 with respect to the classical full search method with comparable values of Peak Signal To Noise Ratio.
快速傅里叶变换的高效分形图像编码
分形编码是一种新的图像压缩技术。虽然该技术有许多吸引人的特点,但由于编码时间长,不适合实时应用。本文提出了一种有效的分形编码算法,该算法对整个图像进行分形编码,而不是对重叠的区域块进行分形编码。与传统的全搜索方法相比,该算法大大缩短了编码时间。编码时间的减少主要是由于使用了改进的基于互相关的相似性度量。实现的算法采用穷举搜索域块及其等距变换来研究域块与每个距离块的相似度。快速傅里叶变换在相似测度计算中的应用加快了编码过程。提出的域块的8个等距变换利用离散傅里叶变换的性质,以尽量减少快速傅里叶变换的计算次数。实验研究表明,与峰值信噪比相当的经典全搜索方法相比,该算法的编码时间大大缩短,平均加速系数为538。
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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