Change detection based on structural conditional random field framework for high spatial resolution remote sensing imagery

In this paper, a structural conditional random field framework (SCRF) is proposed to detect the detailed change information from high spatial resolution (HSR) remote sensing imagery. Traditional random field based methods encounter the over-smoothing problem when deal with HSR images and the boundary of changed objects cannot be preserved well. To solve this problem, in SCRF, fuzzy c means (FCM) is used to model the unary potential while avoiding the independent assumption. Pairwise potentials with different shapes are selected as the structural set to model the spatial features of land cover such as buildings and roads. Based on SCRF, a set of change belief maps are generated to describe the observed image from different aspects. An object based fusion strategy is then followed to combine the belief maps to get the refined result. The results of the proposed method on two HSR data sets outperform some state-of-art algorithms.

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