Recuperação de imagens por conteúdo: uma abordagem multidimensional de modelagem de similaridade e realimentação de relevância

AUTOR(ES)
DATA DE PUBLICAÇÃO

2009

RESUMO

This work presents a multi-dimensional similarity modeling strategy and relevance feedback technique for minimizing the semantic gap intrinsic problem of CBIR systems by allowing users to customize their queries according to their requirements and preferences. We propose a composite strategy using a multi-dimensional, vectorial, spatially clustered, and relevance-ordered approach. Given a set of k features which represents the elements in an image database, the similarity measure between a query image and another from the image collection is analyzed in k components, and the images are ranked on a k dimensional space according to their projections over the axis xn, where n = 1, 2, ... k. System experimentation was executed thoroughly using a test image database containing up to 20,000 pictures. The experimental results have shown that the presented approach can substantially improve the outcome in image retrieval systems.

ASSUNTO(S)

modelagem de similaridade vetorial processamento de imagens - técnicas digitais algoritmo genético realimentação de relevância multidimensional recuperação de imagens engenharia eletrica

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