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Fractal image compression using competitive neural network in frequency domain

机译:利用频域竞争神经网络进行分形图像压缩

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摘要

A new method for fractal image compression is presented. A combination between the idea of nearest neighbor search in the frequency domain and the clustering property of the competitive neural networks is used in this method. In this paper we use two methods for fractal image compression. In the first method (which is the goal of this paper), the DCT transformed range blocks are classified into clusters using a competitive neural network and the centers of clusters are used instead of domains to evaluate the coefficients vectors. In the second method, we implement the two dimensional discrete cosine transform (DCT) of the projected codebook blocks, /spl plusmn/F(D), and ranges, F(R), in order to search for nearest neighbor in the frequency domain as suggested by Barthel et al (IEEE Image Proc. Conf., pp. 112-116, 1994). Comparison of the techniques is conducted.
机译:提出了一种分形图像压缩的新方法。该方法将频域中最近邻居搜索的思想与竞争性神经网络的聚类特性结合起来使用。在本文中,我们使用两种方法进行分形图像压缩。在第一种方法中(这是本文的目标),使用竞争神经网络将DCT变换的范围块分类为聚类,并使用聚类的中心代替域来评估系数向量。在第二种方法中,我们实现了投影码本块/ spl plusmn / F(D)和范围F(R)的二维离散余弦变换(DCT),以便在频域中搜索最近的邻居如Barthel等人建议的那样(IEEE Image Proc。Conf。,第112-116页,1994)。进行技术比较。

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