Graduate School and Research Center In communication systems

Publication: Weighting informativeness of bag-of-visual-words by Kernel optimization for video concept detection

Wang, Feng; Mérialdo, Bernard

VLS-MCMR'10, International Workshop on Very-Large-Scale Multimedia Corpus, Mining and Retrieval, 25-29 October 2010, Florence, Italy

Bag-of-Visual-Words (BoW) feature has been demonstrated e®ective and widely used in video concept detection due to its discriminative ability by capturing the local information in images. In the current approaches, all the words in the visual vocabulary are treated equally for the detection of dif- ferent concepts. This cannot highlight the concept-speci¯c visual information, and thus limits the discriminative ability of BoW feature. In this paper, we propose an approach to boost the performance of video concept detection based on BoW. This is achieved by assigning di®erent weights to the visual words according to their informativeness for the de- tection of di®erent concepts. Kernel alignment score (KAS) is used to measure the discriminative ability of SVM kernels, and the visual words are weighted as a kernel optimization problem. We show that the SVMs based on weighted visual words with our approach outperform the uniformly weight- ing and TF-IDF weighting schemes, and the MAP for the 20 concepts from TRECVID 2009 high-level feature extraction is signi¯cantly improved.

Document Doi Bibtex

Keywords:Bag-of-Visual-Words, Kernel Optimization, Concept Detection
Type:Conference
Language:English
City:Florence
Country:ITALY
Date:
Department:Multimedia Communications
Eurecom ref:3245
Copyright: © ACM, 2010. This is the author's version of the work. It is posted here by permission of ACM for your personal use. Not for redistribution. The definitive version was published in VLS-MCMR'10, International Workshop on Very-Large-Scale Multimedia Corpus, Mining and Retrieval, 25-29 October 2010, Florence, Italy http://dx.doi.org/10.1145/1878137.1878150
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