A Semantic Annotation Method for Efficient Representation of Moving Objects

Recently, researches for semantic annotation methods which represent and search objects included in video data, have been briskly activated since video starts to be popularized as types for interactive contents. Different location data occurs at each frame because coordinates of moving objects are changed with the course of time. Saving the location data for objects of every frame is too ineffective. Thus, it is needed to compress and represent effectively. This paper suggests two methods; the first, ontology modeling for moving objects to make users intuitively understandable for the information, the second, to reduce the amount of data for annotating moving objects by using cubic spline interpolation. To verify efficiency of the suggested method, we implemented the interactive video system and then compared with each video dataset based on sampling intervals. The result follows : when we got samples of coordinate less than every 15 frame, it showed that could save up to 80% amount of data storage; moreover, maximum of error deviation was under 31 pixels and the average was less than 4 pixels.

[1]  Geun-Sik Jo,et al.  Major Character Extraction using Character-Net , 2009 .

[2]  Andrew Zisserman,et al.  Taking the bite out of automated naming of characters in TV video , 2009, Image Vis. Comput..

[3]  Ramakant Nevatia,et al.  VERL: An Ontology Framework for Representing and Annotating Video Events , 2005, IEEE Multim..

[4]  Ernesto Damiani,et al.  Augmented reality technologies, systems and applications , 2010, Multimedia Tools and Applications.

[5]  David Salesin,et al.  Video object annotation, navigation, and composition , 2008, UIST '08.

[6]  Ouri Wolfson,et al.  Cost and imprecision in modeling the position of moving objects , 1998, Proceedings 14th International Conference on Data Engineering.

[7]  Yafei Zhang,et al.  Video Analysis and Trajectory Based Video Annotation System , 2010, 2010 Asia-Pacific Conference on Wearable Computing Systems.

[8]  Vincent S. Tseng,et al.  Integrated Mining of Visual Features, Speech Features, and Frequent Patterns for Semantic Video Annotation , 2008, IEEE Transactions on Multimedia.

[9]  Ebroul Izquierdo,et al.  Logotype detection to support semantic-based video annotation , 2007, Signal Process. Image Commun..

[10]  Bo Xu,et al.  Moving objects databases: issues and solutions , 1998, Proceedings. Tenth International Conference on Scientific and Statistical Database Management (Cat. No.98TB100243).

[11]  Steve Benford,et al.  EmoPlayer: A media player for video clips with affective annotations , 2008, Interact. Comput..