Title :
Learn to Personalized Image Search From the Photo Sharing Websites
Author :
Sang, Jitao ; Xu, Changsheng ; Lu, Dongyuan
Author_Institution :
Nat. Lab. of Pattern Recognition, Inst. of Autom., Beijing, China
Abstract :
Increasingly developed social sharing websites like Flickr and Youtube allow users to create, share, annotate, and comment medias. The large-scale user-generated metadata not only facilitate users in sharing and organizing multimedia content, but provide useful information to improve media retrieval and management. Personalized search serves as one of such examples where the web search experience is improved by generating the returned list according to the modified user search intents. In this paper, we exploit the social annotations and propose a novel framework simultaneously considering the user and query relevance to learn to personalized image search. The basic premise is to embed the user preference and query-related search intent into user-specific topic spaces. Since the users´ original annotation is too sparse for topic modeling, we need to enrich users´ annotation pool before user-specific topic spaces construction. The proposed framework contains two components: (1) a ranking-based multicorrelation tensor factorization model is proposed to perform annotation prediction, which is considered as users´ potential annotations for the images; (2) we introduce user-specific topic modeling to map the query relevance and user preference into the same user-specific topic space. For performance evaluation, two resources involved with users´ social activities are employed. Experiments on a large-scale Flickr dataset demonstrate the effectiveness of the proposed method.
Keywords :
Web sites; image retrieval; meta data; multimedia computing; social networking (online); tensors; Web search experience; Youtube; annotation prediction; large-scale Flickr dataset; large-scale user-generated metadata; media annotation; media comment; media creation; media retrieval improvement; media sharing; multimedia content organization; multimedia content sharing; personalized image search learning; photo sharing Web sites; query relevance; query-related search intent; ranking-based multicorrelation tensor factorization model; returned list generation; social annotations; social sharing Web sites; user preferences; user search intents; user social activities; user-specific topic space construction; Image reconstruction; Media; Predictive models; Search problems; Semantics; Tagging; Tensile stress; Personalized image search; social annotation; tensor factorization; topic model;
Journal_Title :
Multimedia, IEEE Transactions on
DOI :
10.1109/TMM.2011.2181344