An Advanced Non-Gaussian Feature Space Method for POL-SAR Image Segmentation
Abstract
This work extends upon our simple feature-based multichannel SAR segmentation method to incorporate highly desirable statistical properties into a computationally simple
approach. The desirable properties include Markov random field contextual smoothing and goodness-of-fit testing to automatically obtain the significant number of classes. To achieve this we need to find an explicit class model to fit these
non-Gaussian, non-symmetric or skewed feature space clusters.
We take the skewed scale mixture of Gaussian scheme to model our classes and approximate it by a number of constrained Gaussians, thereby retaining much of the speed and simplicity of the original feature space method. The algorithm
will be demonstrated on a real data and compared to an automatic Gaussian model.
Citation
International Geoscience and Remote Sensing Symposium (IGARSS2013),Metadata
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