Abstract

Similarity measure is a challenging task in Content-Based Medical Image Retrieval (CBMIR) systems and the matching scheme is designed to improve the retrieval performance. However, there are several major shortcomings with conventional approaches for a matching scheme which can extensively affect their application of Medical Image Retrieval (MIR). To overcome the issues, in this paper a Multi-Level Matching (MLM) method for MIR using hybrid feature similarity is proposed. Here, images are represented by multi-level features including local level and global level. The Colour and Edge Directivity Descriptor (CEDD) is used as a colour and edge-based descriptor. Speeded-Up Robust Features (SURF) and Local Binary Pattern (LBP) are used as a local descriptor. The hybrid of both global and local features yields enhanced retrieval accuracy, which is analysed over collected image databases. From the experiment, the proposed method achieves better accuracy value about 92%, which is higher than other methods.

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