Uma Versão Intervalar do Método de Segmentação de Imagens Utilizando o K-means
DOI:
https://doi.org/10.5540/tema.2005.06.02.0315Abstract
Uma etapa importante em processamento de imagens digitais é a segmenta ção de imagens, pois, esta etapa é o primeiro passo no processo de análise de imagens, e, a minimização/controle de qualquer erro neste passo é fundamental para um melhor resultado da análise. Atualmente, existem diversos métodos de segmentação de imagens, dentre eles o k-means, e muitas pesquisas são realizadas visando o desenvolvimento de métodos para processamento de imagens digitais cada vez mais precisos. O uso da matemática intervalar associada ao processamento de imagens digitais tem como objetivo controlar possíveis erros computacionais. Processamento de imagens digitais intervalares é uma teoria recente, e, será apresentado neste estudo, a definição de imagens digitais intervalares juntamente com seu processamento, e nesse dentro desse processamento, a segmentação de imagens digitais intervalares, utilizando o método k-means intervalar, que tem como base o método de agrupamento k-means.References
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