DocumentCode :
1399264
Title :
A Hierarchical Visual Model for Video Object Summarization
Author :
Liu, David ; Hua, Gang ; Chen, Tsuhan
Author_Institution :
Siemens Corp. Res., Princeton, NJ, USA
Volume :
32
Issue :
12
fYear :
2010
Firstpage :
2178
Lastpage :
2190
Abstract :
We propose a novel method for removing irrelevant frames from a video given user-provided frame-level labeling for a very small number of frames. We first hypothesize a number of windows which possibly contain the object of interest, and then determine which window(s) truly contain the object of interest. Our method enjoys several favorable properties. First, compared to approaches where a single descriptor is used to describe a whole frame, each window´s feature descriptor has the chance of genuinely describing the object of interest; hence it is less affected by background clutter. Second, by considering the temporal continuity of a video instead of treating frames as independent, we can hypothesize the location of the windows more accurately. Third, by infusing prior knowledge into the patch-level model, we can precisely follow the trajectory of the object of interest. This allows us to largely reduce the number of windows and hence reduce the chance of overfitting the data during learning. We demonstrate the effectiveness of the method by comparing it to several other semi-supervised learning approaches on challenging video clips.
Keywords :
image sequences; learning (artificial intelligence); object detection; video signal processing; frame level labeling; hierarchical visual model; patch level model; semisupervised learning; temporal continuity; video clip; video object summarization; window feature descriptor; Multiple Instance Learning; Topic model; object detection; probabilistic graphical model; semi-supervised learning; video object summarization.;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/TPAMI.2010.31
Filename :
5401164
Link To Document :
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