Přístupnostní navigace
E-application
Search Search Close
Publication detail
CHMELAŘ, P. BURGETOVÁ, I. ZENDULKA, J.
Original Title
Clustering for Video Retrieval
Type
article in a collection out of WoS and Scopus
Language
English
Original Abstract
The paper deals with an application of clustering we used as one of data reduction methods included in processing huge amount of video data provided for TRECVid evaluations. The problem we solved by means of clustering was to partition the local feature descriptors space so that thousands of partitions represent visual words, which may be effectively employed in video retrieval using classical information retrieval techniques. It has proved that well-known algorithms as K-means do not work well in this task or their computational complexity is too high. Therefore we developed a simple clustering method (referred to as MLD) that partitions the high-dimensional feature space incrementally in one to two database scans. The paper describes the problem of video retrieval and the role of clustering in the process, the MLD method and experiments focused on comparison with other clustering methods in the video retrieval application context.
Keywords
Incremental clustering, MLD, Leader, ART, video retrieval, feature extraction, SURF, MSER, SIFT, cosine distance.
Authors
CHMELAŘ, P.; BURGETOVÁ, I.; ZENDULKA, J.
RIV year
2009
Released
1. 9. 2009
Publisher
Springer Verlag
Location
Heidelberg
ISBN
978-3-642-03729-0
Book
Data Warehousing and Knowledge Discovery
Edition
Lecture Notes in Computer Science
Pages from
390
Pages to
401
Pages count
12
BibTex
@inproceedings{BUT30758, author="Petr {Chmelař} and Ivana {Burgetová} and Jaroslav {Zendulka}", title="Clustering for Video Retrieval", booktitle="Data Warehousing and Knowledge Discovery", year="2009", series="Lecture Notes in Computer Science", volume="5691", pages="390--401", publisher="Springer Verlag", address="Heidelberg", isbn="978-3-642-03729-0" }