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Book Chapter
Towards Scalable Dataset Construction: An Active Learning Approach
Book Series
Lecture Notes in Computer Science
Publisher
Springer Berlin / Heidelberg
ISSN
0302-9743 (Print) 1611-3349 (Online)
Volume
Volume 5302/2008
Book
Computer Vision – ECCV 2008
DOI
10.1007/978-3-540-88682-2
Copyright
2008
ISBN
978-3-540-88681-5
DOI
10.1007/978-3-540-88682-2_8
Pages
86-98
Subject Collection
Computer Science
SpringerLink Date
Monday, October 13, 2008
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Towards Scalable Dataset Construction: An Active Learning Approach
Brendan Collins
4
, Jia Deng
4
, Kai Li
4
and Li Fei-Fei
4
(4)
Department of Computer Science, Princeton University, New Jersey, U.S.A.
Abstract
As computer vision research considers more object categories and greater variation within object categories, it is clear that larger and more exhaustive datasets are necessary. However, the process of collecting such datasets is laborious and monotonous. We consider the setting in which many images have been automatically collected for a visual category (typically by automatic internet search), and we must separate relevant images from noise. We present a discriminative learning process which employs active, online learning to quickly classify many images with minimal user input. The principle advantage of this work over previous endeavors is its scalability. We demonstrate precision which is often superior to the state-of-the-art, with scalability which exceeds previous work.
Brendan
Collins
Email:
bmcollin@cs.princeton.edu
Jia
Deng
Email:
dengjia@cs.princeton.edu
Kai
Li
Email:
li@cs.princeton.edu
Li
Fei-Fei
Email:
feifeili@cs.princeton.edu
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