大块熵约束反射残差矢量量化

M. Khan
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引用次数: 0

摘要

多光谱图像和视频编码应用得益于大矢量尺寸的使用。其他应用程序也需要较大的矢量大小,如可变维矢量量化器(VQ)和变换VQ。熵约束反射残差矢量量化(EC-RRVQ)算法是一种设计码本的算法,用于大矢量尺寸的图像编码,除了高输出速率,同时在计算和内存需求方面保持非常低的复杂度。EC-RRVQ有几个重要的优点。它在速率失真性能、编码器复杂度计算和内存方面优于熵约束残差矢量量化(EC-RVQ)。实验结果表明,在较低的比特率下可以实现较好的图像再现质量。例如,在比特率为0.2 bpp,矢量维数为16/spl倍/16的情况下,51/spl倍/512图像Lena的峰值信噪比为29 dB。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large block entropy-constrained reflected residual vector quantization
Multispectral imagery and video coding applications benefit from the use of large vector sizes. Other applications also require large vector sizes such as variable dimension vector quantizers (VQ) and transform VQ. Entropy-constrained reflected residual vector quantization (EC-RRVQ) is an algorithm that is used to design codebooks for image coding with large vector sizes in addition to high output rate while maintaining a very low complexity in terms of computations and memory requirements. EC-RRVQ has several advantages which are important. It can outperform entropy-constrained residual vector quantization (EC-RVQ) in terms of rate-distortion performance, encoder complexity computations, and memory. Experimental results indicate that good image reproduction quality can be accomplished at relatively low bit rates. For example, a peak signal-to-noise ratio of 29 dB is obtained for the 51/spl times/512 image Lena at a bit rate of 0.2 bpp with vector dimension of 16/spl times/16.
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