DocumentCode :
26683
Title :
Click Prediction for Web Image Reranking Using Multimodal Sparse Coding
Author :
Jun Yu ; Yong Rui ; Dacheng Tao
Author_Institution :
Sch. of Comput. Sci. & Technol., Hangzhou Dianzi Univ., Hangzhou, China
Volume :
23
Issue :
5
fYear :
2014
fDate :
May-14
Firstpage :
2019
Lastpage :
2032
Abstract :
Image reranking is effective for improving the performance of a text-based image search. However, existing reranking algorithms are limited for two main reasons: 1) the textual meta-data associated with images is often mismatched with their actual visual content and 2) the extracted visual features do not accurately describe the semantic similarities between images. Recently, user click information has been used in image reranking, because clicks have been shown to more accurately describe the relevance of retrieved images to search queries. However, a critical problem for click-based methods is the lack of click data, since only a small number of web images have actually been clicked on by users. Therefore, we aim to solve this problem by predicting image clicks. We propose a multimodal hypergraph learning-based sparse coding method for image click prediction, and apply the obtained click data to the reranking of images. We adopt a hypergraph to build a group of manifolds, which explore the complementarity of different features through a group of weights. Unlike a graph that has an edge between two vertices, a hyperedge in a hypergraph connects a set of vertices, and helps preserve the local smoothness of the constructed sparse codes. An alternating optimization procedure is then performed, and the weights of different modalities and the sparse codes are simultaneously obtained. Finally, a voting strategy is used to describe the predicted click as a binary event (click or no click), from the images´ corresponding sparse codes. Thorough empirical studies on a large-scale database including nearly 330 K images demonstrate the effectiveness of our approach for click prediction when compared with several other methods. Additional image reranking experiments on real-world data show the use of click prediction is beneficial to improving the performance of prominent graph-based image reranking algorithms.
Keywords :
Internet; feature extraction; graph theory; image coding; image retrieval; learning (artificial intelligence); meta data; optimisation; text analysis; Web image reranking algorithm; binary event; click data; click information; click-based method; image click prediction; large-scale database; local smoothness; multimodal hypergraph learning-based sparse coding method; multimodal sparse coding; optimization procedure; search queries; semantic similarities; text-based image search; textual metadata; visual content; visual feature extraction; voting strategy; Encoding; Image coding; Image reconstruction; Laplace equations; Optimization; Vectors; Visualization; Image reranking; click; manifolds; sparse codes;
fLanguage :
English
Journal_Title :
Image Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1057-7149
Type :
jour
DOI :
10.1109/TIP.2014.2311377
Filename :
6762944
Link To Document :
بازگشت