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A Multiresolution Vector Data Compression Algorithm Based on Space Division

机译:基于空间划分的多分辨率矢量数据压缩算法

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摘要

Vector data compression can significantly improve efficiency of geospatial data management, visualization and data transmission over internet. Existing compression methods are either based on information theory for lossless compression mainly or based on map generalization methods for lossy compression. Coordinate values of vector spatial data are mostly represented using floating-point type in which data redundancy is small and compression ratio using lossy algorithms is generally better than that of lossless compression algorithms. The purpose of paper is to implement a new algorithm for efficient compression of vector data. The algorithm, named space division based compression (SDC), employs the basic idea of linear Morton and Geohash encoding to convert floating-point type values to strings of binary chain with flexible accuracy level. Morton encoding performs multiresolution regular spatial division to geographic space. Each level of regular grid splits space horizontally and vertically. Row and column numbers in binary forms are bit interleaved to generate one integer representing the location of each grid cell. The integer values of adjacent grid cells are proximal to each other on one dimension. The algorithm can set the number of divisions according to accuracy requirements. Higher accuracy can be achieved with more levels of divisions. In this way, multiresolution vector data compression can be achieved accordingly. The compression efficiency is further improved by grid filtering and binary offset for linear and point geometries. The vector spatial data compression takes visual lossless distance on screen display as accuracy requirement. Experiments and comparisons with available algorithms show that this algorithm produces a higher data rate saving and is more adaptable to different application scenarios.
机译:矢量数据压缩可以显着提高地理空间数据管理,可视化和数据传输的效率。现有的压缩方法是基于用于无损压缩的信息理论,或者主要或基于MAP概括方法进行有损压缩。矢量空间数据的坐标值主要是使用浮点类型表示,其中数据冗余是小而使用损耗算法的压缩比通常优于无损压缩算法的压缩比。纸张的目的是实现一种新的算法,以便有效压缩矢量数据。该算法名为基于空间分割的压缩(SDC),采用线性振荡和Geohash编码的基本思想,以将浮点类型值转换为具有灵活精度水平的二进制链串。 Morton编码对地理空间进行多分辨率定期空间划分。每个级别的常规网格水平和垂直分裂空间。二进制表单中的行和列编号是BIT交错,以生成表示每个网格单元的位置的整数。相邻网格单元的整数值在一个维度上彼此彼此邻近。算法可以根据精度要求设置划分的数量。可以通过更多级别的划分实现更高的准确性。以这种方式,可以相应地实现多分辨率矢量数据压缩。通过网格滤波和线性偏移进一步改善压缩效率,用于线性和点几何形状。向量空间数据压缩在屏幕显示屏上采用可视无损距离作为准确性要求。具有可用算法的实验和比较表明,该算法产生了更高的数据速率,并且更适应于不同的应用方案。

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