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一种基于最优模糊聚类的快速序列图像分形编码方法。

A fast sequential image fractal coding approach based on optimal fuzzy clustering.

作者信息

Liang Bin, Yuan Jing, Feng Qian-jin, Chen Wu-fan

机构信息

Key Lab of Medical Image Processing of PLA, First Military Medical University, Guangzhou 510515, China.

出版信息

Di Yi Jun Yi Da Xue Xue Bao. 2004 Feb;24(2):133-8.

Abstract

To reduce the coding time of the conventional method, a fast sequential image fractal compression algorithm was proposed on the basis of the principle of optimal fuzzy clustering (OFC) for an unsupervised sample set with the category number settled by the algorithm itself. We utilized the cost function defined by the OFC algorithm to obtain the best category number corresponding to the minimum value of the function. Firstly the Linde-Buzo-Gray (LBG) algorithm was realized to acquire a rough cluster of the domain pool. Then the optimal category number was obtained by implementing our algorithm with small computational cost. Finally the more precise category was gained and the detail of the reconstructed image efficiently preserved. As a global optimal algorithm, OFC not only helps LBG eliminate the local minima, but also effectively compensates for the arbitrary interference in hard clustering problem. Soft clustering of the domain blocks allows classified searches instead of global ones and takes less coding time, and therefore clearly outperforms to the classic method relying on reduction of the size of the domain pool by classification. In computer simulation, OFC-based algorithm for the fractal coding scheme achieved excellent performance. For some standard and sequential medical images, the results denoted that the encoding speed was improved by about 5 folds without affecting the signal-to-noise ratio and compression ratio, and the quality of the reconstructed image could be better retained.

摘要

为了减少传统方法的编码时间,基于最优模糊聚类(OFC)原理,针对类别数由算法自身确定的无监督样本集,提出了一种快速序列图像分形压缩算法。我们利用OFC算法定义的代价函数来获得对应于该函数最小值的最佳类别数。首先实现林德 - 布佐 - 格雷(LBG)算法以获得值域池的粗略聚类。然后通过以较小的计算成本实现我们的算法来获得最优类别数。最后得到更精确的类别,并有效地保留了重建图像的细节。作为一种全局最优算法,OFC不仅有助于LBG消除局部最小值,还能有效补偿硬聚类问题中的任意干扰。值域块的软聚类允许进行分类搜索而非全局搜索,且编码时间更短,因此明显优于依赖通过分类减小值域池大小的经典方法。在计算机模拟中,基于OFC的分形编码方案算法取得了优异的性能。对于一些标准的序列医学图像,结果表明编码速度提高了约5倍,且不影响信噪比和压缩比,同时能更好地保留重建图像的质量。

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