Rapid Relevance Feedback Strategy Based on Distributed CBIR System

Author:

Liao Jianxin1,baoran li 1,Wang Jingyu1,Qi Qi1,Li Tonghong2

Affiliation:

1. Beijing University of Posts and Telecommunications, Beijing, China

2. Technical University of Madrid, Madrid, Spain

Abstract

This article describes the capability of online data storage which has been enhanced by the emergence of cloud datacenter development. Distributed Hash Table (DHT) based image retrieval system using locality sensitive hash (LSH) has provided an efficient way to set up distributed Content Based Image Retrieval (CBIR) frameworks. However, with the fixed LSH function adopted, LSH and other codebook-based distributed retrieval systems are facing the problem of flexibility, and also are difficult to satisfy the user's demand. In this article, LRFMIR is proposed to introduce semantic search into DHT based CBIR system. LRFMIR is established on a DHT based network, where a flexible result truncating strategy is employed to fuse provided results by using multiple features measurements. Experiments show that LRFMIR provides a higher accuracy and recall rate than single feature employed retrieval systems, and possesses good load balancing and query efficiency performance.

Publisher

IGI Global

Subject

Computer Networks and Communications,Information Systems

Reference30 articles.

1. Surf: Speeded up robust features.;H.Bay;Computer Vision and Image Understanding,2006

2. A survey on content based image retrieval

3. Cloud Computing: Distributed Internet Computing for IT and Scientific Research

4. Latent topics-based relevance feedback for video retrieval

5. Gnutella. (2000). Gnutella website. Retrieved from http://www.gnutella.com

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