Title
Tokyo Tech at TRECVID 2008
Abstract
The Tokyo Institute of Technology team participated in the high-level feature extraction, surveillance event detection pilot and Rushes summarization tasks for TRECVID2008. In the high-level feature (HLF) extraction task, we employed a framework using a tree-structured codebook and a node selection technique last year. This year we focused on the position information of each object-related HLF. During the training phase, we applied our method not on the whole key-frame images, but on the regions in the image which contain the annotated HLF only. From the evaluation of TRECVID2008, the inferred average precisions of the three runs are all 0.011. The method we improved this year doesn’t contribute to a better performance. In surveillance event detection pilot task we use optical flow features and an SVM (Support Vector Machine) to detect each surveillance event. We present our preliminary experimental results in this paper. In the rushes summarization task, we estimated the number of scenes for a summary using minimum description length. We use two low-level features, the YCbCr color histogram and optical flow.
Year
Venue
Field
2008
TRECVID
YCbCr,Automatic summarization,Pattern recognition,Color histogram,TRECVID,Support vector machine,Speech recognition,Feature extraction,Artificial intelligence,Engineering,Optical flow,Codebook
DocType
Citations 
PageRank 
Conference
2
0.39
References 
Authors
5
5
Name
Order
Citations
PageRank
Shanshan Hao121.41
Yusuke Yoshizawa220.39
Koji Yamasaki361.30
Koichi Shinoda446365.14
Sadaoki Furui51639216.96