DocumentCode :
42668
Title :
Linear Dependency Modeling for Classifier Fusion and Feature Combination
Author :
Ma, Andy Jinhua ; Yuen, Pong C. ; Jian-Huang Lai
Author_Institution :
Dept. of Comput. Sci., Hong Kong Baptist Univ., Hong Kong, China
Volume :
35
Issue :
5
fYear :
2013
fDate :
May-13
Firstpage :
1135
Lastpage :
1148
Abstract :
This paper addresses the independent assumption issue in fusion process. In the last decade, dependency modeling techniques were developed under a specific distribution of classifiers or by estimating the joint distribution of the posteriors. This paper proposes a new framework to model the dependency between features without any assumption on feature/classifier distribution, and overcomes the difficulty in estimating the high-dimensional joint density. In this paper, we prove that feature dependency can be modeled by a linear combination of the posterior probabilities under some mild assumptions. Based on the linear combination property, two methods, namely, Linear Classifier Dependency Modeling (LCDM) and Linear Feature Dependency Modeling (LFDM), are derived and developed for dependency modeling in classifier level and feature level, respectively. The optimal models for LCDM and LFDM are learned by maximizing the margin between the genuine and imposter posterior probabilities. Both synthetic data and real datasets are used for experiments. Experimental results show that LCDM and LFDM with dependency modeling outperform existing classifier level and feature level combination methods under nonnormal distributions and on four real databases, respectively. Comparing the classifier level and feature level fusion methods, LFDM gives the best performance.
Keywords :
image classification; image fusion; learning (artificial intelligence); optimisation; statistical distributions; LCDM; LFDM; classifier distribution; classifier level fusion; feature distribution; feature level fusion; high-dimensional joint density estimation; linear classifier dependency modeling; linear feature combination property; linear feature dependency modeling; optimal model learning; posterior probability distribution; real datasets; synthetic data; Computational modeling; Joints; Kernel; Linear programming; Mathematical model; Optimization; Vectors; Linear dependency modeling; classifier level fusion; feature dependency; feature level fusion; multiple feature fusion;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/TPAMI.2012.198
Filename :
6302141
Link To Document :
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