Title :
Relevance Preserving Projection and Ranking for Web Image Search Reranking
Author :
Zhong Ji ; Yanwei Pang ; Xuelong Li
Author_Institution :
Sch. of Electron. Inf. Eng., Tianjin Univ., Tianjin, China
Abstract :
An image search reranking (ISR) technique aims at refining text-based search results by mining images´ visual content. Feature extraction and ranking function design are two key steps in ISR. Inspired by the idea of hypersphere in one-class classification, this paper proposes a feature extraction algorithm named hypersphere-based relevance preserving projection (HRPP) and a ranking function called hypersphere-based rank (H-Rank). Specifically, an HRPP is a spectral embedding algorithm to transform an original high-dimensional feature space into an intrinsically low-dimensional hypersphere space by preserving the manifold structure and a relevance relationship among the images. An H-Rank is a simple but effective ranking algorithm to sort the images by their distances to the hypersphere center. Moreover, to capture the user´s intent with minimum human interaction, a reversed k-nearest neighbor (KNN) algorithm is proposed, which harvests enough pseudorelevant images by requiring that the user gives only one click on the initially searched images. The HRPP method with reversed KNN is named one-click-based HRPP (OC-HRPP). Finally, an OC-HRPP algorithm and the H-Rank algorithm form a new ISR method, H-reranking. Extensive experimental results on three large real-world data sets show that the proposed algorithms are effective. Moreover, the fact that only one relevant image is required to be labeled makes it has a strong practical significance.
Keywords :
data mining; feature extraction; image classification; image retrieval; relevance feedback; spectral analysis; H-reranking; ISR method; ISR technique; OC-HRPP algorithm; Web image search reranking; feature extraction algorithm; high-dimensional feature space; hypersphere center; hypersphere-based rank; hypersphere-based relevance preserving projection; image labelling; image sorting; image visual content mining; intrinsically low-dimensional hypersphere space; large real-world data sets; manifold structure preservation; one-class classification; one-click-based HRPP; pseudorelevant images; ranking function design; relevance preserving ranking; reversed KNN algorithm; reversed k-nearest neighbor algorithm; spectral embedding algorithm; text-based search refining; user intent; Algorithm design and analysis; Classification algorithms; Feature extraction; Support vector machines; Training; Transforms; Visualization; Multimedia information system; feature embedding; image search reranking; multimedia ranking; one-class classification;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2015.2437198