An Image Retrieval With Color and Texture Features of Image Sub-Blocks

An Image Retrieval With Color and Texture Features of Image Sub-Blocks

Paperback (18 Mar 2014)

Save $68.89

  • RRP $84.13
  • $15.24
Add to basket

Includes delivery to the United States

10+ copies available online - Usually dispatched within two working days

Publisher's Synopsis

Each image is partitioned into 4×6 grids of equal-sized sub-blocks. The size of the sub-block is maintained as 64x64 pixels. Further the size of the sub-block is fixed for all the images. Then the color and texture features of each sub-block are computed. A color feature descriptor Local AutoCorrelogram (LAC) which is invariant to translation and occlusion is proposed to represent the color of the sub-block. Similarly, the texture of the sub-block is extracted based on Edge Oriented Gray Tone Spatial Dependency Matrix (EOGTSDM) of an image. An image matching scheme based on Integrated Minimum Cost Sub-block Matching (IMCSM) principle is used to compare the query and the target image, which in turn reduces the cost of finding the integrated matching distance. The adjacency matrix of a bipartite graph is formed using the sub-blocks of query and target image, which is used for matching the images. To further improve the quality of retrieval, a Relevance Feedback approach based on a feature re-weighting scheme is used to improve the retrieval accuracy. The experimental results show that this method has improved retrieval precision and recall.

Book information

ISBN: 9783639713244
Publisher: KS Omniscriptum Publishing
Imprint: Scholars' Press
Pub date:
Language: English
Number of pages: 168
Weight: 264g
Height: 154mm
Width: 229mm
Spine width: 17mm