2017
DOI: 10.1109/jstars.2016.2609804
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River Extraction From High-Resolution SAR Images Combining a Structural Feature Set and Mathematical Morphology

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Cited by 44 publications
(28 citation statements)
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“…This theory was applied in this work at two levels: first, to combine a spatial-based and a radiometric-based sources of information resulting from the application of morphological profile and evidential C-means and second, to fuse mass function obtained from each image using the multidimensional evidential reasoning. The initial surface of the river or of the lake can be identified directly by applying the first two steps on the pre-flooding image, as we have already demonstrated in previous works [29,30]. For the sake of simplification, we will, in what follows, present the intermediate results obtained by applying each step of our algorithm to the two input images shown in Figure 3a,b corresponding to Richelieu River pre-and post flooding SAR images.…”
Section: Overviewmentioning
confidence: 98%
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“…This theory was applied in this work at two levels: first, to combine a spatial-based and a radiometric-based sources of information resulting from the application of morphological profile and evidential C-means and second, to fuse mass function obtained from each image using the multidimensional evidential reasoning. The initial surface of the river or of the lake can be identified directly by applying the first two steps on the pre-flooding image, as we have already demonstrated in previous works [29,30]. For the sake of simplification, we will, in what follows, present the intermediate results obtained by applying each step of our algorithm to the two input images shown in Figure 3a,b corresponding to Richelieu River pre-and post flooding SAR images.…”
Section: Overviewmentioning
confidence: 98%
“…In previous works, we successfully applied the SFS texture measurement to extract homogeneous areas such as road networks from optical images [31,32], and water bodies from SAR images [29,30]. This descriptor has shown very promising results applied to optical images characterized by the presence of various artifacts arising from the use of high spatial resolution and SAR images affected by speckle noise.…”
Section: Texture Extraction Using a Structural Feature Set (Sfs)mentioning
confidence: 99%
“…Being a time-saving method, deep learning can implicitly learn features and generate abstractions from inputs, mirroring what humans trained in specialized fields do, which does not require the end-user to design a proper set of features for a specific field, making its application relatively easy to road extraction. The deep neural network (DNN), a popular deep learning application (Sghaier, Foucher, & Lepage, 2017;Xu, Wang, Zhang, Li, & Zhang, 2017;Zhou, Wang, Xu, & Jin, 2016), exhibits particularly high efficiency in SAR image classification. Feature extraction processes have been integrated into DNN.…”
Section: Introductionmentioning
confidence: 99%
“…However, looking at the results of existing researches, they mostly ignore the estimation of waterinvasion extent and only regard water-body extent as inundation extent because it is difficult to describe waterinvasion extent which is related to the boundary of water, terrains, and landforms. us, incorporating the Mathematical Morphology [24], we proposed an inundation estimation method by combined space-filling method and RS data. e method divided inundation extent into water-body extent and water-invasion extent with high timeliness and accuracy.…”
Section: Space-filling Methodmentioning
confidence: 99%