Overlapped Context Modeling Using Feature Mapping Functions in the Adaptive Arithmetic Coding Process for Lossless Encoding

Jian-Jiun Ding, T. Tseng
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Abstract

Context modeling plays a critical role in the adaptive arithmetic coding process. It classifies the causal part into several classes according to the features extracted from the causal neighboring pixels. However, when the feature value is around the border of the ranges of two adjacent contexts, its corresponding probability model cannot be estimated accurately. In this paper, we propose an advanced way for context assignment. We make the contexts overlapped in both the training phase and the coding phase. With the proposed method, more than one context wm be assigned for each input data. Then, the probability model generated by weighted combination is applied to encode the input data. Then, the frequency table corresponds to the context whose range overlaps with the input data value wm be adjusted. Experimental results on lossless image coding show that, with the proposed algorithm, a high coding efficiency can be achieved.
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基于特征映射函数的自适应算法编码过程中重叠上下文建模的无损编码
上下文建模在自适应算法编码过程中起着至关重要的作用。根据从相邻像素中提取的特征,将因果部分分为几类。然而,当特征值位于两个相邻上下文的范围边界附近时,无法准确估计其对应的概率模型。在本文中,我们提出了一种高级的上下文赋值方法。我们在训练阶段和编码阶段使上下文重叠。使用所建议的方法,可以为每个输入数据分配多个上下文。然后,利用加权组合生成的概率模型对输入数据进行编码。然后,频率表对应于范围与待调整的输入数据值重叠的上下文。图像无损编码实验结果表明,该算法具有较高的编码效率。
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