Entropy coding in video compression using probability interval partitioning

D. Marpe, H. Schwarz, T. Wiegand
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引用次数: 25

Abstract

We present a novel approach to entropy coding, which provides the coding efficiency and simple probability modeling capability of arithmetic coding at the complexity level of Huffman coding. The key element of the proposed approach is a partitioning of the unit interval into a small set of probability intervals. An input sequence of discrete source symbols is mapped to a sequence of binary symbols and each of the binary symbols is assigned to one of the probability intervals. The binary symbols that are assigned to a particular probability interval are coded at a fixed probability using a simple code that maps a variable number of binary symbols to variable length codewords. The probability modeling is decoupled from the actual binary entropy coding. The coding efficiency of the probability interval partitioning entropy (PIPE) coding is comparable to that of arithmetic coding.
基于概率间隔分割的视频压缩熵编码
我们提出了一种新的熵编码方法,它在霍夫曼编码的复杂性水平上提供了算术编码的编码效率和简单的概率建模能力。该方法的关键要素是将单位区间划分为小概率区间集。将离散源符号的输入序列映射到二进制符号序列,并将每个二进制符号分配到其中一个概率区间。分配给特定概率区间的二进制符号以固定概率编码,使用简单代码将可变数量的二进制符号映射到可变长度的码字。概率建模与实际的二值熵编码解耦。概率区间划分熵(PIPE)编码的编码效率与算术编码相当。
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