A grid-based boundary sharpening clustering algorithm

To address the clustering problem for arbitrary shapes, in this paper, we propose a Grid-based Boundary Sharpening clustering algorithm called as “GBSharp”. This method is grounded in morphology and relies on two fundamental morphological operations: dilation and erosion. The main innovations of the...

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Vydané v:Engineering applications of artificial intelligence Ročník 161; s. 112045
Hlavní autori: Ma, Lin, Yan, Qijing, Lv, Mengxia, Ma, Tiefeng, Cheng, Mingchang
Médium: Journal Article
Jazyk:English
Vydavateľské údaje: Elsevier Ltd 01.12.2025
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ISSN:0952-1976
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Shrnutí:To address the clustering problem for arbitrary shapes, in this paper, we propose a Grid-based Boundary Sharpening clustering algorithm called as “GBSharp”. This method is grounded in morphology and relies on two fundamental morphological operations: dilation and erosion. The main innovations of the proposed algorithm lie in two aspects. Firstly, we further introduce the concepts of inward dilation and bridge erosion based on the basic morphological operations to reduce the impact of the chain effect. Secondly, a unique indexing structure is designed specifically for non-empty cells in high dimensional space. In addition, to tackle the complex conditional judgments encountered in high-dimensional scenarios, we further utilize the inversion method for bridge-erosion operation. Experiments conducted on synthetic datasets and real-world datasets further validate the effectiveness and efficiency of the proposed algorithm. •An adaptive binary threshold distinguishes foreground from background grid cells.•Inward dilation and bridge-erosion operations to refine boundaries between clusters.•Non-empty cell indexing structure for addressing high-dimensional issues.•Inversion method for performing high-dimensional bridge-erosion operations.•The proposed method is applicable to large-scale meteorological data.
ISSN:0952-1976
DOI:10.1016/j.engappai.2025.112045