Artículos de revistas
Class-specific metrics for multidimensional data projection applied to CBIR
Fecha
2012Registro en:
The Visual Computer, Heidelberg, v. 28, n. 10, Special Issue, supl. 1, Part 2, p. 1027-1037, oct, 2012
0178-2789
10.1007/s00371-012-0730-z
Autor
Jóia Filho, Paulo
Gomez-Nieto, Erick Mauricio
Casaca, Wallace Correa de Oliveira
Botelho, Glenda Michele
Paiva Neto, Afonso
Nonato, Luis Gustavo
Institución
Resumen
Content-based image retrieval is still a challenging issue due to the inherent complexity of images and choice of the most discriminant descriptors. Recent developments in the field have introduced multidimensional projections to burst accuracy in the retrieval process, but many issues such as introduction of pattern recognition tasks and deeper user intervention to assist the process of choosing the most discriminant features still remain unaddressed. In this paper, we present a novel framework to CBIR that combines pattern recognition tasks, class-specific metrics, and multidimensional projection to devise an effective and interactive image retrieval system. User interaction plays an essential role in the computation of the final multidimensional projection from which image retrieval will be attained. Results have shown that the proposed approach outperforms existing methods, turning out to be a very attractive alternative for managing image data sets.