DocumentCode
1537923
Title
Content-based event retrieval using semantic scene interpretation for automated traffic surveillance
Author
Jung, Young-Kee ; Lee, Kyu-Won ; Ho, Yo-Sung
Author_Institution
Dept. of Comput. Eng, Honam Univ., Kwangju, South Korea
Volume
2
Issue
3
fYear
2001
fDate
9/1/2001 12:00:00 AM
Firstpage
151
Lastpage
163
Abstract
This paper proposes an object segmentation and tracking algorithm for visual surveillance applications. In order to detect moving objects from a dynamic background scene which may have temporal clutters such as swaying plants, we devised an adaptive background update method and a motion classification rule. A two-dimensional token-based tracking system using a Kalman filter is designed to track individual objects under occlusion conditions. We propose a new occlusion reasoning approach where we consider two different types of occlusion: explicit occlusion and implicit occlusion. By tracking individual objects with segmented data, we can generate motion trajectories and set a motion model using polynomial curve fitting. The trajectory model is used as an indexing key for accessing the individual object in the semantic level. We also propose an efficient way of indexing and searching based on object-specific features at different semantic levels. The proposed searching scheme supports various queries including query by example, query by sketch, and query on weighting parameters for event-based retrieval. When retrieving an interested video clip, the system returns the best matching event in the similarity order. In addition, we implement a temporal event graph for direct accessing and browsing of a specific event in the video sequence
Keywords
Kalman filters; automated highways; computer vision; content-based retrieval; curve fitting; filtering theory; grammars; image retrieval; image segmentation; indexing; object recognition; surveillance; tracking; 2D token-based tracking system; Kalman filter; adaptive background update method; automated visual traffic surveillance; browsing; content-based event retrieval; example-based query; indexing key; motion classification rule; motion trajectory generation; moving object detection; object segmentation; occlusion reasoning approach; polynomial curve fitting; searching; semantic scene interpretation; sketch-based query; temporal clutters; temporal event graph; video clip; video sequence; weighting-parameter-based query; Content based retrieval; Indexing; Layout; Motion detection; Object detection; Object segmentation; Polynomials; Surveillance; Tracking; Trajectory;
fLanguage
English
Journal_Title
Intelligent Transportation Systems, IEEE Transactions on
Publisher
ieee
ISSN
1524-9050
Type
jour
DOI
10.1109/6979.954548
Filename
954548
Link To Document