An alphabet reduction algorithm for lossless compression of images with sparse histograms

S. Chaoui, Atef Masmoudi
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引用次数: 2

Abstract

In this paper, we propose a new adaptive arithmetic coding for lossless image compression applying an alphabet reduction algorithm. The algorithm is a reduction mechanism of the alphabet set within each block by assigning to each one an as small as possible symbol set including all the really present symbols called active symbols, instead of using the nominal alphabet set. The method can be considered as away to address the well-known zero-frequency problem which appears especially for images with sparse and locally sparse histograms. The analytical expression of the expected gain in terms of compression efficiency when using the block active symbol sets is derived. We show experimentally that the proposed method, in conjunction with adaptive arithmetic coding order-0 model applied for images with sparse and locally sparse histograms, provides promising compression ratios and outperforms several state-of-the-art lossless image compression standards such as JPEG2000, JPEG-LS and CALIC.
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一种用于稀疏直方图图像无损压缩的字母约简算法
在本文中,我们提出了一种新的自适应算术编码无损图像压缩应用字母减少算法。该算法是每个块内字母集的缩减机制,通过向每个块分配一个尽可能小的符号集,该符号集包括被称为活动符号的所有实际存在的符号,而不是使用标称字母集。该方法可以被认为是解决众所周知的零频率问题的方法,该问题特别出现在具有稀疏和局部稀疏直方图的图像中。导出了当使用块活动符号集时在压缩效率方面的期望增益的解析表达式。我们的实验表明,所提出的方法与适用于具有稀疏和局部稀疏直方图的图像的自适应算术编码有序0模型相结合,提供了有希望的压缩比,并优于JPEG2000、JPEG-LS和CALIC等几种最先进的无损图像压缩标准。
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