MaskLink: Efficient Link Discovery for Spatial Relations via Masking Areas
Georgios Santipantakis, Christos Doulkeridis, George A. Vouros, and Akrivi Vlachou

TL;DR
MaskLink is a novel spatial link discovery technique that significantly improves filtering efficiency for topological and proximity relations, addressing streaming data challenges and enabling parallel processing.
Contribution
The paper introduces MaskLink, a new filtering method for spatial link discovery that outperforms existing algorithms and extends to proximity relations, with advantages for streaming data and parallelization.
Findings
MaskLink outperforms state-of-the-art in topological link discovery.
MaskLink demonstrates performance gains in proximity-based link discovery.
The method is suitable for streaming data and parallel processing.
Abstract
In this paper, we study the problem of spatial link discovery (LD), focusing primarily on topological and proximity relations between spatial objects. The problem is timely due to the large number of sources that generate spatial data, including streaming sources (e.g., surveillance of moving objects) but also archival sources (such as static areas of interest). To address the problem of integrating data from such diverse sources, link discovery techniques are required to identify various spatial relations efficiently. Existing approaches typically adopt the filter and refine methodology by exploiting a blocking technique for effective filtering. In this paper, we present a new spatial LD technique, called MaskLink, that improves the effectiveness of the filtering step. We show that MaskLink outperforms the state-of-the-art algorithm for link discovery of topological relations, while…
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Taxonomy
TopicsData Management and Algorithms · Data Quality and Management · Geographic Information Systems Studies
