Image retrieval based on index compressed vector quantization |
| |
Authors: | Amir Masud Eftekhari-MoghadamAuthor Vitae Jamshid ShanbehzadehAuthor Vitae |
| |
Affiliation: | a Iran Telecommunication Research Center, Tehran, Iran b Department of Computer Engineering, Tarbiat Moalem University, Tehran, Iran c Department of Electrical and Computer Engineering, Tehran University, Tehran, Iran d Department of Radiology, Henry Ford Health System, Detroit, Michigan, USA |
| |
Abstract: | Increased amount of visual data in several applications necessitates content-based image retrieval. Since most of visual data is stored in compressed form, it is crucial to develop indexing techniques for searching images based on their content in compressed form. Therefore, it is desirable to explore image compression techniques with capability of describing image content in compressed form. Vector Quantization (VQ) is a compression scheme that exploits intra-block correlation and image correlation reflects image content, hence VQ is a suitable compression technique for compressed domain image retrieval.This paper introduces a novel indexing scheme for compressed domain image databases based on indices generated from IC-VQ. The proposed scheme extracts image features based on relationship between indices of IC-VQ compressed images. This relationship detects contiguous regions of compressed image based on inter- and intra-block correlation. Experimental results show effectiveness superiority of the new scheme compared to VQ and color-based schemes. |
| |
Keywords: | Image retrieval Image indexing Index-compressed VQ Region correlation Compressed domain |
本文献已被 ScienceDirect 等数据库收录! |
|