Fuzzy ontology-based complex and uncertain video surveillance events recognition

Allassane Issa Salaou, Abdelghani Ghomari
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Abstract

Nowadays, video surveillance systems are part of our daily life, because of their role in ensuring the security of goods and people this generates a huge amount of video data. Thus, several research works based on the ontology paradigm have tried to develop an efficient system to index and search precisely a very large volume of videos. Due to their semantic expressiveness, ontologies are undoubtedly very much in demand in recent years in the field of video surveillance to overcome the problem of the semantic gap between the interpretation of the data extracted from the low level and the high-level semantics of the video. Despite its good expressiveness of semantics, a classical ontology may not be sufficient for good handling of uncertainty, which is however commonly present in the video surveillance domain, hence the need to consider a new ontological approach that will better represent uncertainty. Fuzzy logic is recognized as a powerful tool for dealing with vague, incomplete, imperfect, or uncertain data or information. In this work, we develop a new ontological approach based on fuzzy logic. All the relevant fuzzy concepts such as Video_Objects, Video_Events, Video_Sequences, that could appear in a video surveillance domain are well represented with their fuzzy Ontology DataProperty and the fuzzy relations between them (Ontology ObjectProperty). To achieve this goal, the new fuzzy video surveillance ontology is implemented using the fuzzy ontology web language 2 (fuzzy owl2) which is an extension of the standard semantic web language, ontology web language 2 (owl2).
基于模糊本体的复杂不确定视频监控事件识别
如今,视频监控系统已经成为我们日常生活的一部分,由于其在保障货物和人员安全方面的作用,因此产生了大量的视频数据。因此,一些基于本体范式的研究工作试图开发一种高效的系统来精确地索引和搜索大量的视频。近年来,视频监控领域对本体的需求非常大,因为本体具有很强的语义表达能力,可以克服对视频低层次数据的解释和对视频高层次语义的解释之间的语义差距问题。尽管经典本体具有良好的语义表达能力,但它可能不足以很好地处理视频监控领域中普遍存在的不确定性,因此需要考虑一种新的本体方法来更好地表示不确定性。模糊逻辑被认为是处理模糊、不完整、不完善或不确定的数据或信息的有力工具。本文提出了一种基于模糊逻辑的本体论方法。视频监控领域中可能出现的所有相关模糊概念,如Video_Objects、Video_Events、Video_Sequences,都用它们的模糊本体数据属性(Ontology DataProperty)和它们之间的模糊关系(Ontology ObjectProperty)很好地表示出来。为了实现这一目标,本文采用标准语义web语言本体web语言2 (owl2)的扩展——模糊本体web语言2 (fuzzy owl2)实现了新的模糊视频监控本体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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