BBC rush summarization and High-Level Feature extraction In TRECVID2008
نویسندگان
چکیده
In this paper, first we describe rushes summarization system which is made this year for the TRECVID2008 BBC rushes task. Our aim this year is to build up base system using minimum information and to see how it works. In the second we will describe about our High-level feature extraction system briefly.
منابع مشابه
Informedia @ TRECVID2008: Exploring New Frontiers
The Informedia team participated in the tasks of Rushes summarization, high-level feature extraction and event detection in surveillance video. For the rushes summarization, our basic idea was to use subsampled video at the appropriate rate, showing almost the whole video faster, and then modify the result to remove garbage frames. Sinply subsampling the frames proved to be the best method for ...
متن کاملHierarchical Modeling and Adaptive Clustering for Real- time Summarization of Compressed Rush Videos
In this paper, our techniques used in TRECVID’08 on BBC rush summarization are described. Firstly, rush videos are hierarchical modeled using formal language description. Then, shot detection and V-unit determination are applied for video structuring; junk frames within the model are also effectively removed. Thirdly, adaptive clustering is employed to group shots into clusters to remove retake...
متن کاملNTTLAB AT TRECVID 2008 BBC Rushes Summarization Task
This paper presents our approach on the BBC rushes summarization task in the context of TRECVID2008. We combined cut detection and color histogram based features with DP matching for ‘junk’ frame removal and performed audiovisual event detection for calculating an importance measure in order to select video material subjected to inclusion into the final summary. Furthermore we present the novel...
متن کاملTRECVID 2007--Overview
The TREC Video Retrieval Evaluation (TRECVID) 2007 represents the seventh running of a TREC-style (trec.nist.gov) video retrieval evaluation, the goal of which remains to promote progress in content-based retrieval from digital video via open, metrics-based evaluation. Over time this effort should yield a better understanding of how systems can effectively accomplish such retrieval and how one ...
متن کاملShanghai Jiao Tong University participation in high-level feature extraction, automatic search and surveillance event detectionat TRECVID 2008
In this paper, we describe our participation for high-level feature extraction, automatic search and surveillance event detection at TRECVID 2008 evaluation. In high-level feature extraction, we use selective attention model to extract visual salient feature which highlights the most visual attractive information of an image. Besides this, we extract 7 low-level features for various modalities ...
متن کامل