Abstract
The demand for automatically recognizing and retrieving medical images for screening, reference, and management is growing faster than ever. In this paper, we present an intelligent content-based image retrieval system called I-Browse, which integrates both iconic and semantic content for histological image analysis. The I-Browse system combines low-level image processing technology with high-level semantic analysis of medical image content through different processing modules in the proposed system architecture. Similarity measures are proposed and their performance is evaluated. Furthermore, as a byproduct of semantic analysis, I-Browse allows textual annotations to be generated for unknown images. As an image browser, apart from retrieving images by image example, it also supports query by natural language.
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CITATION STYLE
Tang, H. L., Hanka, R., & Ip, H. H. S. (2003). Histological image retrieval based on semantic content analysis. IEEE Transactions on Information Technology in Biomedicine, 7(1), 26–36. https://doi.org/10.1109/TITB.2003.808500
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