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一种基于图像纹理分析的分形和SPIHT混合编码 被引量:2

A Hybrid Image Coding Based on Image Texture Analysis of Fractal and SPIHT
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摘要 从研究分形图像编码和零树编码各自的优劣点以及它们之间的结合点出发,寻找了一种基于图像纹理分析的分形和SPIHT混合编码,目的在于充分利用景物特征和人眼的视觉特性,提高分形变换和零树在图像编码领域内的协同能力。该方法利用SPIHT算法位平面编码的渐进特性,用基于灰度模型的统计特征分类方法将分形和SPIHT相结合,得到更符合人眼视觉特性的编码方案。实验结果表明,该方法能进行较好的图像块分类,并取得较高的压缩比,而且在人眼视觉允许的范围内且同时又要求高压缩比的情况下具有优势。 Starting off the research of respective advantages and disadvantages of fractal image coding and zerotree image coding and their bonding points, a hybrid image coding based on image texture analysis of fractal and SPIHT(Set Partition in Hierarchical Trees) is presented to make full use of scenery characteristics and eye' s vision features and then improve the cooperation ability of fractal and zerotree in the area of image coding. The prominent feature of this method is that it makes full use of the progressiveness of bit plane coding used in SPIHT coder and combine the fractal and SPIHT with statistical, characteristic taxonomy based on grey-model' and then get the coding scheme that is more suitabl'e for eye' s vision features. The result shows this method can classify the image block clearly and get high compression rate. And this method gains a better effect when generally considers the recovery image quality and compression rate, under the condition of the permission of eyes and high compression rate.
出处 《中国图象图形学报》 CSCD 北大核心 2005年第12期1485-1490,共6页 Journal of Image and Graphics
基金 国家自然科学基金项目(10171033) 广东省"千百十工程"优秀人才基金项目(Q02052) 广东省自然科学基金项目(31340) 广州市科技计划项目(2004J1-C0081) 广东省计算机网络重点实验室开放基金项目(CN200401)
关键词 混合图像编码 分形图像编码 SPIHT零树编码 小波变换 图像纹理分析 hybrid image coding, fractal image coding, SPIHT zerotree coding, wavelet transform, image texture analysis
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参考文献13

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二级参考文献2

共引文献39

同被引文献19

  • 1张专成,武国斌,赵怀勋,闫小萍.一种基于系数状态表的SPIHT图像编码算法[J].中国图象图形学报,2006,11(2):162-168. 被引量:4
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