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Smoothing Parameter Estimation for Markov Random Field Classification of non-Gaussian Distribution Image
2014
ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences
In the context of remote sensing image classification, Markov random fields (<i>MRFs</i>) have been used to combine both spectral and contextual information. The <i>MRFs</i> use a smoothing parameter to balance the contribution of the spectral versus spatial energies, which is often defined empirically. This paper proposes a framework to estimate the smoothing parameter using the probability estimates from support vector machines and the spatial class co-occurrence distribution. Furthermore, we
doi:10.5194/isprsannals-ii-7-1-2014
fatcat:kqfsyrv6bzdddf2dyaugvdpv6i