Title
An effective and economical architecture for semantic-based heterogeneous multimedia big data retrieval
Abstract
The precision rate outperforms some other approaches in the case of user feedback.When the database increases, the time cost is significantly lower than other approaches.Store the semantic information in the database, not directly process multimedia data with large size. The storage and I/O cost are reduced.Low-end computers together with open-source frameworks are adopted. The investment possesses good economic efficiency. Data variety has been one of the most critical features for multimedia big data. Some multimedia documents, although in different data formats and storage structures, often express similar semantic information. Therefore, the way to manage and retrieve multimedia documents reflecting users' intent in heterogeneous big data environments has become an important issue. In this paper, we present an effective and economical architecture named SHMR (Semantic-based Heterogeneous Multimedia Retrieval), which uses low cost to store and retrieve semantic information from heterogeneous multimedia data. Firstly, the particularity of heterogeneous multimedia retrieval in big data environments is addressed. Secondly, an approach to extract and represent semantic information for heterogeneous multimedia documents is proposed. Thirdly, a NoSQL-based approach to semantic storage, in which multimedia can be parallel processed in distributed nodes is provided. Finally, a MapReduce-based retrieval algorithm is presented and a user feedback supported scheme to achieve high retrieval precision and good user experience is designed. The experimental results indicate that the retrieval performance and economic efficiency of SHMR are suitable for multimedia information retrieval in heterogeneous big data environments.
Year
DOI
Venue
2015
10.1016/j.jss.2014.09.016
Journal of Systems and Software
Keywords
Field
DocType
big data
Economic efficiency,Architecture,User experience design,Information retrieval,Computer science,Multimedia information retrieval,NoSQL,Retrieval algorithm,Multimedia big data,Big data
Journal
Volume
Issue
ISSN
102
C
0164-1212
Citations 
PageRank 
References 
17
0.61
32
Authors
5
Name
Order
Citations
PageRank
Kehua Guo17515.76
Wei Pan2170.61
Mingming Lu334330.42
Xiaoke Zhou4170.61
Jianhua Ma5252.12