首页> 外文期刊>Computerized Medical Imaging and Graphics: The Official Jounal of the Computerized Medical Imaging Society >Progressive lossless compression of volumetric data using small memory load.
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Progressive lossless compression of volumetric data using small memory load.

机译:使用较小的内存负载进行体积数据的渐进式无损压缩。

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Nowadays, applications dealing with volumetric datasets, Medical applications being a typical representative, have become possible even on low cost computers due to a rapid increase of computer memory and processing power. However, even today, dealing with volumetric datasets creates two considerable problems: slow visualization and large file sizes. While recently, due to significant progress in graphics hardware, real-time or near real-time volume visualization has become possible, volume compression still remains a problematic issue. This paper introduces a new method for lossless compression of volumetric datasets. It is based on quadtree encoding. The method consists of three steps: during initialization, so-called division quadtree is built. The smallest unit of the division quadtree is called basic macro-block. During the processing phase, Boolean intersection is built on pairs of quadtrees, and the differences are stored. In the last phase, the variable length encoding is applied to reduce the entropy among the differences. Proposed method supports progressive visualization, what is especially important when a transfer trough the internet is needed. To test the efficiency of this method it was compared to popular octree encoding scheme. The results proved that data coherence is exploited more sufficiently using proposed quadtree approach. Additional advantage of this approach is that the algorithm does not need a lot of memory space. Only two quadtrees of two consecutive slices need be loaded in the memory at the same time. This feature makes this algorithm extremely attractive for possible hardware implementation. This paper introduces a new method for the compression of volumetric datasets. It is based on quadtree encoding. This method consists of three steps: during initialization, a so-called division quadtree is built. The smallest, unit of the division quadtree is called a basic macro-block. A Boolean intersection is built on pairs of quadtrees during the processing phase and the differences are stored. In the last phase, variable length encoding is applied to reduce entropy among the differences. This method has been compared with the popular octree-based method and gives, in general, better compression results. In addition, this method can be realized using small on-board memory.
机译:如今,由于计算机内存和处理能力的迅速提高,即使在低成本计算机上,处理体积数据集的应用程序(医疗应用程序也是典型代表)已成为可能。但是,即使在今天,处理体积数据集也会产生两个相当大的问题:缓慢的可视化和较大的文件大小。近来,由于图形硬件的重大进步,实时或近实时的体积可视化已成为可能,但体积压缩仍然是一个有问题的问题。本文介绍了一种新的体积数据集无损压缩方法。它基于四叉树编码。该方法包括三个步骤:在初始化期间,将构建所谓的除四叉树。划分四叉树的最小单位称为基本宏块。在处理阶段,布尔交集建立在四叉树对上,并存储差异。在最后一个阶段,应用可变长度编码来减少差异之间的熵。所提出的方法支持渐进式可视化,当需要通过互联网进行传输时,这一点尤为重要。为了测试这种方法的效率,将其与流行的八叉树编码方案进行了比较。结果证明,使用提出的四叉树方法可以更充分地利用数据一致性。这种方法的另一个优点是该算法不需要大量的存储空间。只需将两个连续切片的两个四叉树同时加载到内存中。此功能使该算法对于可能的硬件实现极为有吸引力。本文介绍了一种用于压缩体积数据集的新方法。它基于四叉树编码。该方法包括三个步骤:在初始化期间,将构建一个所谓的除四叉树。划分四叉树的最小单位称为基本宏块。在处理阶段,在四叉树对上建立布尔交集,并存储差异。在最后一个阶段,应用可变长度编码来减少差异之间的熵。该方法已与流行的基于octree的方法进行了比较,并且总体上提供了更好的压缩结果。此外,可以使用较小的板载内存来实现此方法。

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