dc.description.abstract | This paper proposes a novel synthetic aperture radar (SAR) image
segmentation algorithm based on the neutrosophic set (NS) and improved
artificial bee colony (I-ABC) algorithm. In this algorithm, threshold
value estimation is considered as a search procedure that searches for a
proper value in a grayscale interval. Therefore, I-ABC optimization
algorithm is presented to search for the optimal threshold value. In
order to get an efficient and powerful fitness function for I-ABC
algorithm, the input SAR image is transformed into the NS domain. Then,
a neutrosophic T and I subset images are obtained. A co-occurrence
matrix based on the neutrosophic T and I subset images is constructed,
and two-dimensional gray entropy function is described to serve as the
fitness function of I-ABC algorithm. Finally, the optimal threshold
value is quickly explored by the employed, onlookers and scouts bees in
I-ABC algorithm. This paper contributes to SAR image segmentation in two
aspects: (1) a hybrid model, having two different feature extraction
methods, is proposed. (2) An optimal threshold value is automatically
selected by maximizing the separability of the classes in gray level
image by incorporating a simple and fast search strategy. The
effectiveness of the proposed algorithm is demonstrated by application
to real SAR images. (C) 2014 Elsevier B.V. All rights reserved. | |