2020
DOI: 10.3390/s20020397
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Intelligent Object Recognition of Urban Water Bodies Based on Deep Learning for Multi-Source and Multi-Temporal High Spatial Resolution Remote Sensing Imagery

Abstract: High spatial resolution remote sensing image (HSRRSI) data provide rich texture, geometric structure, and spatial distribution information for surface water bodies. The rich detail information provides better representation of the internal components of each object category and better reflects the relationships between adjacent objects. In this context, recognition methods such as geographic object-based image analysis (GEOBIA) have improved significantly. However, these methods focus mainly on bottom-up class… Show more

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Cited by 43 publications
(17 citation statements)
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References 43 publications
(44 reference statements)
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“…Liang et al [19] introduced dense connection structure in the full convolution network to reduce the shallow feature loss, get more detailed information from the remote sensing images, and achieve better water extraction. Song et al [20] used the self-learning ability of deep learning to construct a modified Mask R-CNN method which integrates bottom-up and top-down processes for water recognition. Yu et al [21] presented a novel deep learning framework for waterbody extraction from Landsat images considering both its spectral and spatial information, which is a hybrid of CNN and logistic regression classifier.…”
Section: Related Work 21 Water Extraction Methodsmentioning
confidence: 99%
“…Liang et al [19] introduced dense connection structure in the full convolution network to reduce the shallow feature loss, get more detailed information from the remote sensing images, and achieve better water extraction. Song et al [20] used the self-learning ability of deep learning to construct a modified Mask R-CNN method which integrates bottom-up and top-down processes for water recognition. Yu et al [21] presented a novel deep learning framework for waterbody extraction from Landsat images considering both its spectral and spatial information, which is a hybrid of CNN and logistic regression classifier.…”
Section: Related Work 21 Water Extraction Methodsmentioning
confidence: 99%
“…Waterbodies are common targets in RS images. Various deep learning frameworks have been developed for extracting waterbodies Feng, Sui, Huang, Xu, & An, 2018;Isikdogan, Bovik, & Passalacqua, 2017;Li et al, 2019a;Song et al, 2020;Wang, Li, & Zeng et al, 2020b). It is worth mentioning that waterbodies consist of lakes, rivers, and sea.…”
Section: Object Detection and Object Extractionmentioning
confidence: 99%
“…Intelligent computing and automatic analysis is the premise of RS-STBD for data mining, information extraction and knowledge transformation from RS observation data. The processing of RS data has experienced three developments stage from qualitative RS to quantitative RS [29], and then to intelligent RS [30]. Generally, qualitative model and conceptual model are used to realize the qualitative analysis of RS.…”
Section: Intelligent Computing Model and Data Mining Theory Of Rs-stbdmentioning
confidence: 99%