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OPTIMAL STRUCTURE OF MEMORY MODELS FOR LOSSLESS COMPRESSION OF BINARY IMAGE CONTOURS

机译:二元图像轮廓无损压缩存储模型的最佳结构

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In this paper we study various chain codes, which are representations of binary image contours, in terms of their ability to compress in the best way the contour information using memory models. We consider five chain codes, including the widely used AF8 and 3OT codes, and note that they correspond to memory models of first and second order for contour representation. In order to provide predictive distributions for the arithmetic coding, memory distribution models such as Markov models and context trees utilized in adaptive configurations are used on top of the chain codes. By additionally accounting for all side costs we obtain losslessly decodable files and find the best performer to be the context tree modeling applied to the sequence of 3OT chain codes, surpassing all results recently reported in the literature for the same data set of bilevel images.
机译:在本文中,我们研究了各种链条代码,这些链条代码是二进制图像轮廓的表示,其能够以使用存储器模型的最佳方式压缩轮廓信息的最佳方式。 我们考虑了五个链条代码,包括广泛使用的AF8和3码代码,并注意到它们对应于轮廓表示的第一和二阶的内存模型。 为了为算术编码提供预测分布,在链码的顶部使用诸如Markov模型和在自适应配置中使用的上下文树的存储器分配模型。 通过另外考虑所有方面成本,我们获得无损可解码的文件,并找到最佳表现者,以应用于3个链条代码的序列的上下文树建模,超过最近在文献中报告的所有数据集的Bilevel图像的所有结果。

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