INAUT   24330
INSTITUTO DE AUTOMATICA
Unidad Ejecutora - UE
artículos
Título:
A New Approach to Segmentation of Multispectral Remote Sensing Images Based on MRF
Autor/es:
BAUMGARTNER JOSEF; GIMENEZ ROMERO, JAVIER ALEJANDRO; SCAVUZZO MARCELO; PUCHETA JULIAN
Revista:
IEEE GEOSCIENCE AND REMOTE SENSING LETTERS
Editorial:
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
Referencias:
Lugar: New York; Año: 2015 vol. 12 p. 1720 - 1724
ISSN:
1545-598X
Resumen:
Segmentation of multispectral remote sensing images is a key competence for a great variety of applications. Many of the applied segmentation algorithms are generative models based on Markov random fields. These approaches are generally limited to multivariate probability densities like the normal distribution. Besides that, it is usually impossible to adjust the contextual parameters separately for each frequency band. In this work, we present a new segmentation algorithm that avoids the mentioned problems and allows the use of any univariate density function as emission probability in each band. The approach consists of three steps: First, calculate feature vectors for each frequency band. Second, estimate contextual parameters for each band and apply local smoothing. Third, merge the feature vectors of the frequency bands to obtain a final segmentation. This procedure can be iterated but experiments show, that after the first iteration most of the pixels are already in their final state. We call our approach Successive Band Merging (SBM). To evaluate the performance of SBM, we segment a Landsat 8 and an AVIRIS image. In both cases, the κ coefficients show, that SBM outperforms the benchmark algorithms.