Relevance and irrelevance graph based marginal Fisher analysis for image search reranking

Zhong Ji, Yanwei Pang, Yuan Yuan, Jing Pan

Research output: Contribution to journalArticlepeer-review

7 Scopus citations

Abstract

Learning-to-rank techniques have shown promising results in the domain of image ranking recently, where dimensionality reduction is a critical step to overcome the "curse of dimensionality". However, conventional dimensionality reduction approaches cannot guarantee the satisfying performance because the important ranking information is ignored. This paper presents a novel "Ranking Dimensionality Reduction" scheme specifically designed for learning-to-rank based image ranking, which aims at not only discovering the intrinsic structure of data but also keeping the ordinal information. Within this scheme, a new dimensionality reduction algorithm called Relevance Marginal Fisher Analysis (RMFA) is proposed. RMFA models the proposed pairwise constraints of relevance-link and irrelevance-link into the relevance graph and the irrelevance graph, and applies the graphs to build the objective function with the idea of Marginal Fisher Analysis (MFA). Further, a semi-supervised RMFA algorithm called Semi-RMFA is developed to offer a more general solution for the real-world application. Extensive experiments are carried on two popular, real-world image search reranking datasets. The promising results demonstrate the robustness and effectiveness of the proposed scheme and methods.

Original languageEnglish
Pages (from-to)139-152
Number of pages14
JournalSignal Processing
Volume121
DOIs
StatePublished - Apr 2016
Externally publishedYes

Keywords

  • Dimensionality reduction
  • Image ranking
  • Image search reranking
  • Learning-to-rank
  • Marginal Fisher Analysis
  • Multimedia information system

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