Abstract

In geographic information systems, the reliability of querying, analysing, or reasoning results depends on the data quality. One central criterion of data quality is consistency, and identifying inconsistencies is crucial for maintaining the integrity of spatial data from multiple sources or at multiple resolutions. In traditional methods of consistency assessment, vector data are used as the primary experimental data. In this manuscript, we describe the use of a new type of raster data, tile maps, to access the consistency of information from multiscale representations of the water bodies that make up drainage systems. We describe a hierarchical methodology to determine the spatial consistency of tile-map datasets that display water areas in a raster format. Three characteristic indices, the degree of global feature consistency, the degree of local feature consistency, and the degree of overlap, are proposed to measure the consistency of multiscale representations of water areas. The perceptual hash algorithm and the scale-invariant feature transform (SIFT) descriptor are applied to extract and measure the global and local features of water areas. By performing combined calculations using these three characteristic indices, the degrees of consistency of multiscale representations of water areas can be divided into five grades: exactly consistent, highly consistent, moderately consistent, less consistent, and inconsistent. For evaluation purposes, the proposed method is applied to several test areas from the Tiandi map of China. In addition, we identify key technologies that are related to the process of extracting water areas from a tile map. The accuracy of the consistency assessment method is evaluated, and our experimental results confirm that the proposed methodology is efficient and accurate.

Highlights

  • Five essential dimensions regarding a possible geospatial data standard, including the positional accuracy, attribute accuracy, logical consistency, completeness, and lineage, were proposed in the 1980s [1]

  • Logical consistency is a crucial element of spatial data quality [2]; maintaining the consistency of spatial data is very important for aspects, including the high-speed transmission of spatial data on the Internet [3], querying spatial data at multiple resolutions [4], and extracting and integrating information from spatial data with varying levels of detail [5]

  • An official spatial dataset can be considerably different from a volunteered geographic information (VGI) dataset

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Summary

Introduction

Five essential dimensions regarding a possible geospatial data standard, including the positional accuracy, attribute accuracy, logical consistency, completeness, and lineage, were proposed in the 1980s [1]. The consistency of geographical objects at different scales must be assessed and maintained when integrating spatial data. The correspondences are used to assess the structural consistency of spatial objects at different levels of detail. The consistency of the directional relationships among these multiple representations can be assessed by determining whether the derived relationships match those established from the multi-resolution spatial objects at a coarse level. Methods of distinguishing and grading inconsistency information from multiscale spatial data must be determined In this manuscript, we hierarchically use both global and local features of images to analyze and study this problem. 2d01in7,t6o, 2f4iv0 e components (object extraction, object matching, feature comparison oafn2d0 analysis, and consistency measurement), which are shown, to treat tile data as a potential ionbtjoecfit voef ccooInSmPsRipsStIonetnn. The inconsistencies in multiscale representations of water areas are divided into five grades: exactly consistent, highly consistent, moderately consistent, less consistent, and inconsistent

Feature Classification and the Degree of Consistency
Degree of Global Feature Consistency
Findings
Filling Holes in Water Areas
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