On the Use of Ontology as A Priori Knowledge into Constrained Clustering

Hatim Chahdi, Nistor Grozavu, I. Mougenot, Laure Berti-Équille, Younès Bennani
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引用次数: 4

Abstract

Recent studies have shown that the use of a priori knowledge can significantly improve the results of unsupervised classification. However, capturing and formatting such knowledge as constraints is not only very expensive requiring the sustained involvement of an expert but it is also very difficult because some valuable information can be lost when it cannot be encoded as constraints. In this paper, we propose a new constraint-based clustering approach based on ontology reasoning for automatically generating constraints and bridging the semantic gap in satellite image labeling. The use of ontology as a priori knowledge has many advantages that we leverage in the context of satellite image interpretation. The experiments we conduct have shown that our proposed approach can deal with incomplete knowledge while completely exploiting the available one.
本体作为先验知识在约束聚类中的应用
近年来的研究表明,使用先验知识可以显著提高无监督分类的结果。然而,捕获和格式化这些知识作为约束不仅非常昂贵,需要专家的持续参与,而且也非常困难,因为一些有价值的信息在不能编码为约束时可能会丢失。本文提出了一种基于本体推理的约束聚类方法,用于自动生成约束,弥合卫星图像标注中的语义鸿沟。本体作为先验知识的使用在卫星图像解译中具有许多优势。我们所做的实验表明,我们提出的方法可以处理不完整的知识,同时完全利用可用的知识。
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