2018
DOI: 10.1109/tgrs.2018.2822783
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VPRS-Based Regional Decision Fusion of CNN and MRF Classifications for Very Fine Resolution Remotely Sensed Images

Abstract: Index Terms-rough set, convolutional neural network, Markov random field, uncertainty, regional fusion decision.

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Cited by 64 publications
(30 citation statements)
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“…With the intrinsic advantages of hierarchical feature representation, the patch-based CNN models provide great potential to extract higher-level land use semantic information. However, this patch-wise procedure introduces artefacts on the border of the classified patches and often produces blurred boundaries between ground surface objects (Zhang et al, 2018a(Zhang et al, , 2018b, thus, introducing uncertainty in the classification. In addition, to obtain a full resolution classification map, pixel-wise densely overlapped patches were used at the model inference phase, which inevitably led to extremely redundant computation.…”
Section: Introductionmentioning
confidence: 99%
“…With the intrinsic advantages of hierarchical feature representation, the patch-based CNN models provide great potential to extract higher-level land use semantic information. However, this patch-wise procedure introduces artefacts on the border of the classified patches and often produces blurred boundaries between ground surface objects (Zhang et al, 2018a(Zhang et al, , 2018b, thus, introducing uncertainty in the classification. In addition, to obtain a full resolution classification map, pixel-wise densely overlapped patches were used at the model inference phase, which inevitably led to extremely redundant computation.…”
Section: Introductionmentioning
confidence: 99%
“…Such translational invariance can help detect objects with higher order features, such as LU or functional sites. However, this characteristic becomes a major weakness in LC and LU classification for pixel-level differentiation, which introduces artefacts on the border of the classified patches and often produces blurred boundaries between ground surface objects (Zhang et al, 2018a(Zhang et al, , 2018b, thus, introducing uncertainty into the LC/LU classification. Previous research has, therefore, developed improved techniques for adapting CNN models to the LU/LC classification task.…”
Section: Introductionmentioning
confidence: 99%
“…The combination of the two classifiers (OSVM and OCNN), therefore, represents a new rule-based decision fusion strategy that incorporates this key principle. Such a fusion strategy exactly capturing the complementarity between the two sub-modules, even with different types of data (optical and SAR images), is straightforward and efficient in comparison to previous methods (in which two or more parameters are usually employed, e.g., [38,58]), since only one parameter (α) is required. Moreover, there are some other parameters that need to be finely tuned, including those used in the sub-modules and image segmentation.…”
Section: Discussionmentioning
confidence: 99%