Adaptive Gray Level Difference to Speed Up Fractal Image Compression

V. R. Prasad, Vaddella, R. Babu, Inampudi
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引用次数: 8

Abstract

Fractal image compression is a lossy compression technique that has been developed in the early 1990s. It makes use of the local self similarity property existing in an image and finds a contractive mapping affine transformation (fractal transform) T, such that the fixed point of T is close to the given image in a suitable metric. It has generated much interest due to its promise of high compression ratios with good decompression quality. The other advantage is its multiresolution property, i.e. an image can be decoded at higher or lower resolutions than the original without much degradation in quality. However, the encoding time is computationally intensive. In this paper, a new method to reduce the encoding time based on computing the gray level difference of domain and range blocks, is presented. A comparison for best match is performed between the domain and range blocks only if the range block gray level difference is less than the domain block gray level difference. This reduces the number of comparisons, and thereby the encoding time considerably, while obtaining good fidelity and compression ratio for the decoded image. Experimental results on standard gray scale images (512times512, 8 bit) show that the proposed method yields superior performance over conventional fractal encoding
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自适应灰度差加速分形图像压缩
分形图像压缩是20世纪90年代初发展起来的有损压缩技术。它利用图像中存在的局部自相似性质,找到一个压缩映射仿射变换(分形变换)T,使得T的不动点在一个合适的度量中接近给定图像。由于它承诺高压缩比和良好的解压质量,它已经产生了很多兴趣。另一个优点是它的多分辨率特性,即图像可以在比原始图像更高或更低的分辨率下解码,而不会有很大的质量下降。然而,编码时间是计算密集型的。本文提出了一种基于计算域块和距离块灰度差来减少编码时间的新方法。只有当范围块灰度差小于域块灰度差时,才会在域块和范围块之间进行最佳匹配比较。这减少了比较的次数,从而大大减少了编码时间,同时获得了解码图像的良好保真度和压缩比。在标准灰度图像(512times512, 8 bit)上的实验结果表明,该方法优于传统的分形编码
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