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首页> 外文期刊>APSIPA Transactions on Signal and Information Processing >Lossless image coding using hierarchical decomposition and recursive partitioning
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Lossless image coding using hierarchical decomposition and recursive partitioning

机译:使用分层分解和递归分区的无损图像编码

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摘要

State-of-the-art lossless image compression schemes, such as JPEG-LS and CALIC, have been proposed in the context-adaptive predictive coding framework. These schemes involve a prediction step followed by context-adaptive entropy coding of the residuals. However, the models for context determination proposed in the literature, have been designed using ad-hoc techniques. In this paper, we take an alternative approach where we fix a simpler context model and then rely on a systematic technique to efficiently exploit spatial correlation to achieve efficient compression. The essential idea is to decompose the image into binary bitmaps such that the spatial correlation that exists among non-binary symbols is captured as the correlation among few bit positions. The proposed scheme then encodes the bitmaps in a particular order based on the simple context model. However, instead of encoding a bitmap as a whole, we partition it into rectangular blocks, induced by a binary tree, and then independently encode the blocks. The motivation for partitioning is to explicitly identify the blocks within which the statistical correlation remains the same. On a set of standard test images, the proposed scheme, using the same predictor as JPEG-LS, achieved an overall bit-rate saving of 1.56% against JPEG-LS.
机译:在上下文自适应预测编码框架中提出了最新的无损图像压缩方案,例如JPEG-LS和CALIC。这些方案包括预测步骤,然后是残差的上下文自适应熵编码。但是,文献中提出的用于上下文确定的模型已经使用临时技术进行了设计。在本文中,我们采用了一种替代方法,即先修复一个简单的上下文模型,然后依靠系统的技术来有效利用空间相关性以实现有效压缩。基本思想是将图像分解为二进制位图,以便将非二进制符号之间存在的空间相关性捕获为少数位位置之间的相关性。然后,所提出的方案基于简单上下文模型以特定顺序对位图进行编码。但是,我们没有将位图整体编码,而是将其划分为由二叉树诱导的矩形块,然后独立编码这些块。进行分区的动机是明确标识统计相关性保持不变的块。在一组标准测试图像上,所提出的方案使用与JPEG-LS相同的预测因子,相对于JPEG-LS总体上节省了1.56%的比特率。

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