Image coding based on mixture modeling of wavelet coefficients and a fast estimation-quantization framework

Scott M. LePresto, K. Ramchandran, M. Orchard
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引用次数: 313

Abstract

We introduce a new image compression paradigm that combines compression efficiency with speed, and is based on an independent "infinite" mixture model which accurately captures the space-frequency characterization of the wavelet image representation. Specifically, we model image wavelet coefficients as being drawn from an independent generalized Gaussian distribution field, of fixed unknown shape for each subband, having zero mean and unknown slowly spatially-varying variances. Based on this model, we develop a powerful "on the fly" estimation-quantization (EQ) framework that consists of: (i) first finding the maximum-likelihood estimate of the individual spatially-varying coefficient field variances based on causal and quantized spatial neighborhood contexts; and (ii) then applying an off-line rate-distortion (R-D) optimized quantization/entropy coding strategy, implemented as a fast lookup table, that is optimally matched to the derived variance estimates. A distinctive feature of our paradigm is the dynamic switching between forward and backward adaptation modes based on the reliability of causal prediction contexts. The performance of our coder is extremely competitive with the best published results in the literature across diverse classes of images and target bitrates of interest, in both compression efficiency and processing speed. For example, our coder exceeds the objective performance of the best zerotree-based wavelet coder based on space-frequency-quantization at all bit rates for all tested images at a fraction of its complexity.
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基于小波系数混合建模和快速估计量化框架的图像编码
我们引入了一种新的图像压缩范式,它结合了压缩效率和速度,并基于一个独立的“无限”混合模型,该模型准确地捕捉了小波图像表示的空间频率特征。具体来说,我们将图像小波系数建模为从独立的广义高斯分布场中提取,每个子带具有固定的未知形状,具有零均值和未知的缓慢空间变化方差。基于该模型,我们开发了一个强大的“动态”估计量化(EQ)框架,该框架包括:(i)首先基于因果关系和量化的空间邻域上下文找到单个空间变化系数场方差的最大似然估计;(ii)然后应用离线率失真(R-D)优化的量化/熵编码策略,实现为快速查找表,该策略与派生的方差估计最佳匹配。我们的范式的一个显著特征是基于因果预测上下文的可靠性在前向和后向适应模式之间动态切换。在压缩效率和处理速度方面,我们的编码器的性能与文献中不同类别的图像和感兴趣的目标比特率的最佳发表结果极具竞争力。例如,我们的编码器在所有测试图像的所有比特率下,以其复杂性的一小部分超过了基于空间频率量化的最佳基于零树的小波编码器的客观性能。
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