Title
Heterogeneous Manifold Ranking for Image Retrieval.
Abstract
Graph-based ranking models, such as manifold ranking (MR), have been widely used in various image retrieval applications. To further improve such models, a current trend is to fuse the ranking results from multiple feature sets. Most of existing methods mainly concentrate on fusing the homogeneous feature sets derived from a single information channel, like the multiple modalities of image visual content, but little is known in fusing such heterogeneous feature sets derived from multiple information channels as the click-through data associated with images and their visual content. The primary challenge is how to effectively exploit the complementary properties of the heterogeneous feature sets. Another tough issue is the low-quality nature of the click-through data, which makes the exploration of such complementary properties more difficult. In this paper, we propose a heterogeneous MR (HMR) model, in which a couple of graphs built on the click and visual feature sets are fused to simultaneously encode the image ranking results. Specifically, our HMR model applies different solutions to fuse the heterogeneous feature sets in terms of whether the relevance feedback mechanism is available or not. In addition, we develop a click refinement technique to address the noiseness and sparseness problems inherent in the click-through data. Concretely, it prunes the inaccurate clicks from the click-through data using a neighbor voting strategy, and then enriches the pruned data with novel yet accurate clicks based on a novel collaborative filtering (CF) approach, which is devised by integrating the merits of three popularly used CF methods, thus called Tri-CF algorithm. Extensive experiments on the tasks of click refinement and image retrieval demonstrate the superior performance of the proposed algorithms over several representative methods, especially when the click-through data is highly noisy and sparse.
Year
DOI
Venue
2017
10.1109/ACCESS.2017.2740326
IEEE ACCESS
Keywords
Field
DocType
Image retrieval,manifold ranking,collaborative filtering,click-through data
Data modeling,Collaborative filtering,Relevance feedback,Ranking,Pattern recognition,Feature detection (computer vision),Computer science,Feature (computer vision),Image retrieval,Artificial intelligence,Visual Word
Journal
Volume
ISSN
Citations 
5
2169-3536
0
PageRank 
References 
Authors
0.34
38
5
Name
Order
Citations
PageRank
Jun Wu112515.66
Yu He27111.67
Xiangnan Guo300.34
Yujia Zhang4319.22
Na Zhao53716.03