Uncorrelated geo-text inhibition method based on Voronoi k-order and spatial correlations in web maps

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Abstract

Unstructured geo-text annotations volunteered by users of web map services enrich the basic geographic data. However, irrelevant geo-texts can be added to the web map, and these geo-texts reduce utility to users. Therefore, this study proposes a method to detect uncorrelated geo-text annotations based on Voronoi k-order neighborhood partition and auto-correlation statistical models. On the basis of the geo-text classification and semantic vector transformation, a quantitative description method for spatial autocorrelation was established by the Voronoi weighting method of inverse vicinity distance. The Voronoi k-order neighborhood self-growth strategy was used to detect the minimum convergence neighborhood for spatial autocorrelation. The Pearson method was used to calculate the correlation degree of the geo-text in the convergence region and then deduce the type of geo-text to be filtered. Experimental results showed that for given geo-text types in the study region, the proposed method effectively calculated the correlation between new geo-texts and the convergence region, providing an effective suggestion for preventing uncorrelated geo-text from uploading to the web map environment.

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APA

He, Y., Sheng, Y., Jing, Y., Yin, Y., & Hasnain, A. (2020). Uncorrelated geo-text inhibition method based on Voronoi k-order and spatial correlations in web maps. ISPRS International Journal of Geo-Information, 9(6). https://doi.org/10.3390/ijgi9060381

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