基于双正交小波变换和改进SOFM的矢量量化图像编码

Songzhao Xie, Chengyou Wang, Chao Cui
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引用次数: 1

摘要

本文研究了用小波变换对图像进行不同尺度分解后系数的统计性质和分布性质。根据子图像的统计特性和系数的分布特性,对每个子图像进行不同的量化和编码方案。采用差分脉冲编码调制(DPCM)对低频子图像进行小波系数压缩。采用基于自组织特征映射(SOFM)算法的Kohonen神经网络对高频子图像中的小波系数进行压缩和矢量量化。此外,矢量量化采用改进的SOFM算法,缩短了编解码时间。利用这些压缩技术,在获得较好的重构图像的同时,可以获得较满意的压缩比,缩短编码和解码时间。
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Vector quantization image coding based on biorthogonal wavelet transform and improved SOFM
This paper studies the statistical properties and distributed properties of the coefficients after the image is decomposed at different scales by using the wavelet transform. The different quantization and coding scheme for each subimage are carried out in accordance with its statistical properties and distributed properties of the coefficients. The wavelet coefficients in low frequency subimages are compressed by using Differential Pulse Code Modulation (DPCM). The wavelet coefficients in high frequency subimages are compressed and vector quantized by using Kohonen neural network on Self-Organizing Feature Mapping (SOFM) algorithm. In addition, an improved SOFM algorithm is used in vector quantization in order to shorten the encoding and decoding time. Using these compression techniques, we can obtain rather satisfactory compression ratio as well as shorten the encoding and decoding time while achieving superior reconstructed images.
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