Image Retrieval Using Dynamic Weighting of Compressed High Level Features Framework with LER Matrix

Authors

  • S. Tannaz Department of Electrical Engineering, Urmia Branch, Islamic Azad University, Urmia, Iran.
  • T. Sedghi Department of Electrical Engineering, Urmia Branch, Islamic Azad University, Urmia, Iran.
Abstract:

In this article, a fabulous method for database retrieval is proposed.  The multi-resolution modified wavelet transform for each of image is computed and the standard deviation and average are utilized as the textural features. Then, the proposed modified bit-based color histogram and edge detectors were utilized to define the high level features. A feedback-based dynamic weighting of shape, color and textural features composition produce a resistant feature vectors for image retrieval and recall. A comprehensive and unified matching scheme based on matrix error rate technique was accomplished for similarity of image and retrieval procedure. The feature vectors size in our algorithm is the least one evaluated to the different techniques. Furthermore, the calculation time of previously published techniques is much more than the presented algorithm which is a benefit in proposed retrieval method. The experimental results illustrates that novel algorithm obtains more precious in retrieval and the efficiency in evaluating with the other techniques and algorithms at Corel color image database.

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Journal title

volume 14  issue 2

pages  153- 161

publication date 2018-06

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