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Hybrid Image Compression Based on Set-Partitioning Embedded Block Coder and Residual Vector Quantization

机译:基于集划分嵌入式块编码器和残差矢量量化的混合图像压缩

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摘要

A hybrid image coding scheme based on the set-partitioning embedded block coder (SPECK) and residual vector quantization (RVQ) is proposed for image compression. In which, the scaling and wavelet coefficients of an image are coded by using the original SPECK algorithm and the SPECK with RVQ, respectively. The use of hybrid coding strategy by combining SPECK with RVQ for high frequency wavelet coefficients is to take account of the energy clustering property of wavelet transform. Experimental results show that, for gray-level still images, the proposed hybrid RVQ-SPECK coder outperforms SPECK, e.g. the peak-signal-to-noise-ratio (PSNR) values can be improved by 1.67 dB and 0.69 dB at compression rate of 1 bit per pixel for the 256 x 256 gray-level Lena and Barbra images, respectively. The application for chroma subsampling images is also presented in this paper, and the proposed method usually outperforms color SPECK method. The PSNR values can be improved by 1.11 dB for the Y plane, 0.99 dB for the U plane, and 2.31 dB for the V plane at the bit budget of 81,920 bits for the test image Goldhill. In addition to high coding efficiency, the proposed method also preserves the features of embeddedness, low decoding complexity, and exact bit-rate control.
机译:提出了一种基于集合划分嵌入式块编码器(SPECK)和残差矢量量化(RVQ)的混合图像编码方案。其中,分别使用原始的SPECK算法和带有RVQ的​​SPECK对图像的缩放系数和小波系数进行编码。通过将SPECK与RVQ结合使用混合编码策略来处理高频小波系数,是要考虑小波变换的能量聚类特性。实验结果表明,对于灰度级静态图像,拟议的RVQ-SPECK混合编码器性能优于SPECK,例如对于256 x 256灰度Lena和Barbra图像,在每像素1位压缩率的情况下,峰值信噪比(PSNR)值可以分别提高1.67 dB和0.69 dB。本文还介绍了色度二次采样图像的应用,该方法通常优于彩色SPECK方法。对于测试图像Goldhill,在81,920位的位预算下,Y平面的PSNR值可以提高1.11 dB,U平面的0.99 dB,V平面的2.31 dB。除了编码效率高以外,该方法还保留了嵌入性,低解码复杂度和精确的比特率控制等特征。

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