2020
DOI: 10.3390/ijgi9070418
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GeohashTile: Vector Geographic Data Display Method Based on Geohash

Abstract: In the development of geographic information-based applications for mobile devices, achieving better access speed and visual effects is the main research aim. In this paper, we propose a new geographic data display method based on Geohash, namely GeohashTile, to improve the performance of traditional geographic data display methods in data indexing, data compression, and the projection of different granularities. First, we use the Geohash encoding system to represent coordinates, as well as to partitio… Show more

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Cited by 17 publications
(6 citation statements)
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“…Geohash encoding converts latitude and longitude into a set of binary strings and then crosses the two sets of strings bit by bit to generate a new set of binary strings (Zhou et al, 2020), converting two‐dimensional spatial queries into one‐dimensional string matching. With this advantage, geohash can achieve fast queries with time complexity of O(1).…”
Section: Knn Calculation Methodsmentioning
confidence: 99%
“…Geohash encoding converts latitude and longitude into a set of binary strings and then crosses the two sets of strings bit by bit to generate a new set of binary strings (Zhou et al, 2020), converting two‐dimensional spatial queries into one‐dimensional string matching. With this advantage, geohash can achieve fast queries with time complexity of O(1).…”
Section: Knn Calculation Methodsmentioning
confidence: 99%
“…In the field of spatial data partitioning,Geohash encoding and space-filling curves are two effective methods for dimensionality reduction partitioning of data. The literature [2,3] used Geohash strings as partitioning keys to partition and index large-scale geographic data, which effectively improved the retrieval efficiency of data. The literature [4] constructs a multi-level spatio-temporal grid index based on Z-curves, but fails to take into account the sparse and uneven distribution of trajectory data.…”
Section: Big Data Storagementioning
confidence: 99%
“…Firstly, we unpack the map of the sea area that the fishing boat passes through into rectangular grids by using the Geohash algorithm [42,43], and the size of the divided rectangular grids is determined by the character coding length of Geohash. Based on the size of the fishing boat, we choose the character length of 7 to determine the grid area size, and the area size determined by the Geohash algorithm is 153 m × 153 m. The coded fishing ground area is composed of a series of numbered grids, and the trajectory points where fishing boats are composed of these numbers.…”
Section: Regional Gridding Of Fishing Ground and Vectorization Of Fis...mentioning
confidence: 99%