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Content Based Image Retrieval Approach Based on Top-Hat Transform And Modified Local Binary Patterns

Authors

Mohammad Saberi, Farshad Tajeripour and Shervan Fekri-Ershad, Shiraz University, Iran

Abstract

In this paper a robust approach is proposed for content based image retrieval (CBIR) using texture analysis techniques. The proposed approach includes three main steps. In the first one, shape detection is done based on Top-Hat transform to detect and crop object part of the image. Second step is included a texture feature representation algorithm using color local binary patterns (CLBP) and local variance features. Finally, to retrieve mostly closing matching images to the query, log likelihood ratio is used. The performance of the proposed approach is evaluated using Corel and Simplicity image sets and it compared by some of other well-known approaches in terms of precision and recall which shows the superiority of the proposed approach. Low noise sensitivity, rotation invariant, shift invariant, gray scale invariant and low computational complexity are some of other advantages.

Keywords

Image retrieval, Local binary pattern, Local variance, Top-Hat Transform, Texture analysis

Full Text  Volume 2, Number 5