废弃行李检测:一种基于本体的异常活动识别方法

Ashish Singh Patel, Vivek Tiwari, Muneendra Ojha, O. P. Vyas
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引用次数: 0

摘要

对监控系统生成的视频数据进行分析,需要一种有效的方法来表示、存储和检索,以便进行推理以识别异常事件。由于缺乏训练样本,现有的机器学习/深度学习方法通常很难识别异常事件。弃置行李识别是公共场所安全威胁的关键问题之一。它可能在不同的场景中以几种形式出现。然而,由于训练样本数量有限,每个可能的案例的训练都极具挑战性。在这项工作中,基于本体的推理和分析来识别公共场所遗留行李的复杂事件。提出了一种新的公共场所监控视频数据本体,以表示各种场景。此外,使用语义Web规则语言(SWRL)对推理关系进行推理。提出的基于本体的方法将视频数据中的重要信息提取并表示为知识图。使用SPARQL查询从知识中识别异常事件(遗弃的行李)。此外,还可以制定SPARQL查询来检索重要信息和回答问题。通过识别PETS 2006、PETS 2007、AVSS 2007和ABODA数据集中的复杂事件遗落行李,验证了该框架的有效性。
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Abandoned Luggage Detection: An Ontology-based approach for unusual activity recognition
Analysis of video data generated by surveillance systems requires an efficient way to represent, store, and retrieve for performing reasoning to identify unusual events. The recognition of unusual events is often difficult with existing machine-learning/Deep Learning approaches as they suffer due to lack of training examples. Abandoned luggage identification is one of the critical problem which poses security threat in public places. It may occur in several forms with various scenarios. However training for each possible case is extremely challenging due to limited amount of training examples. In this work, an ontology-based reasoning and analysis for identifying the complex event of left luggage in public places. A novel ontology is presented that represents the public place surveillance video data to represent various scenarios. Moreover, a reasoning is performed using Semantic Web Rule language (SWRL) for inferring relations. The proposed ontology-based approach extracts and represents salient information present in video data as a knowledge graph. The unusual events (Abandoned Luggage) is identified form the knowledge using SPARQL queries. Furthermore, the SPARQL queries can also be formulated to retrieve salient information and for question answering. The proposed framework is validated by identifying the complex events left luggage in PETS 2006, PETS 2007, AVSS 2007 and ABODA Dataset.
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