4.5 Article

A point-feature label placement algorithm based on spatial data mining

期刊

MATHEMATICAL BIOSCIENCES AND ENGINEERING
卷 20, 期 7, 页码 12169-12193

出版社

AMER INST MATHEMATICAL SCIENCES-AIMS
DOI: 10.3934/mbe.2023542

关键词

metaheuristics; point-feature label placement; data mining; spatial distribution characteristics; label correlation

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The paper proposes a point feature label placement algorithm based on spatial data mining, which analyzes the local spatial distribution characteristics and label correlations of point features. The interference among point features is quantified by a label frequent pattern framework, and an ascending label ordering method is designed to reduce interference. Three classical metaheuristic algorithms are applied to verify the validity of this framework. Additionally, a bit-based grid spatial index is proposed to reduce cache memory and consumption time in conflict detection. Experimental results show significant improvements in label quality and efficiency.
The point-feature label placement (PFLP) refers to the process of positioning labels near point features on a map while adhering to specific rules and guidelines, finally obtaining clear, aesthetically pleasing, and conflict-free maps. While various approaches have been suggested for automated point feature placement on maps, few studies have fully considered the spatial distribution characteristics and label correlations of point datasets, resulting in poor label quality in the process of solving the label placement of dense and complex point datasets. In this paper, we propose a pointfeature label placement algorithm based on spatial data mining that analyzes the local spatial distribution characteristics and label correlations of point features. The algorithm quantifies the interference among point features by designing a label frequent pattern framework (LFPF) and constructs an ascending label ordering method based on the pattern to reduce interference. Besides, three classical metaheuristic algorithms (simulated annealing algorithm, genetic algorithm, and ant colony algorithm) are applied to the PFLP in combination with the framework to verify the validity of this framework. Additionally, a bit-based grid spatial index is proposed to reduce cache memory and consumption time in conflict detection. The performance of the experiments is tested with 4000, 10000, and 20000 points of POI data obtained randomly under various label densities. The results of these literature, with label quality improvements ranging from 3 to 6.7 and from 0.1 to 2.6, respectively. (2) The label efficiency was improved by 58.2% compared with the traditional grid index.

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