Mining Visual Concepts for Image Retrieval: A Case Study

نویسنده

  • D. Deng
چکیده

We propose a mechanism of visual concept formation in image databases using self-organizing feature maps. Taking flag images as a case study, we managed to mine out a few visual concepts and hence enabled a content-based image retrieval system with the ability of searching by concepts.

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تاریخ انتشار 2001