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Semantic trajectory based event detection and event pattern mining

journal contribution
posted on 2011-12-01, 00:00 authored by X Wang, Gang LiGang Li, G Jiang, Z Shi
Video event detection is an effective way to automatically understand the semantic content of the video. However, due to the mismatch between low-level visual features and high-level semantics, the research of video event detection encounters a number of challenges, such as how to extract the suitable information from video, how to represent the event, how to build up reasoning mechanism to infer the event according to video information. In this paper, we propose a novel event detection method. The method detects the video event based on the semantic trajectory, which is a high-level semantic description of the moving object’s trajectory in the video. The proposed method consists of three phases to transform low-level visual features to middle-level raw trajectory information and then to high-level semantic trajectory information. Event reasoning is then carried out with the assistance of semantic trajectory information and background knowledge. Additionally, to release the users’ burden in manual event definition, a method is further proposed to automatically discover the event-related semantic trajectory pattern from the sample semantic trajectories. Furthermore, in order to effectively use the discovered semantic trajectory patterns, the associative classification-based event detection framework is adopted to discover the possibly occurred event. Empirical studies show our methods can effectively and efficiently detect video events.

History

Journal

Knowledge and information systems

Volume

37

Pagination

305 - 329

Publisher

Springer UK

Location

London, England

ISSN

0219-1377

eISSN

0219-3116

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2011, Springer-Verlag London Limited