2022
DOI: 10.3390/rs14010206
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Multi-Scale Feature Aggregation Network for Water Area Segmentation

Abstract: Water area segmentation is an important branch of remote sensing image segmentation, but in reality, most water area images have complex and diverse backgrounds. Traditional detection methods cannot accurately identify small tributaries due to incomplete mining and insufficient utilization of semantic information, and the edge information of segmentation is rough. To solve the above problems, we propose a multi-scale feature aggregation network. In order to improve the ability of the network to process boundar… Show more

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Cited by 46 publications
(23 citation statements)
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“…Due to the limitation of human body topology, it is difficult for the graph volume model to learn the relationship between various end nodes, which is often an important part of the action. In addition, the deep graph convolution model easily leads to the phenomenon of excessive smoothing of features [ 25 , 26 , 27 ], so it is not suitable to use the deep model [ 28 , 29 , 30 ]. Inspired by the dual attention network (DA-net) [ 31 , 32 ], an attention module is proposed.…”
Section: Proposed Methodsmentioning
confidence: 99%
“…Due to the limitation of human body topology, it is difficult for the graph volume model to learn the relationship between various end nodes, which is often an important part of the action. In addition, the deep graph convolution model easily leads to the phenomenon of excessive smoothing of features [ 25 , 26 , 27 ], so it is not suitable to use the deep model [ 28 , 29 , 30 ]. Inspired by the dual attention network (DA-net) [ 31 , 32 ], an attention module is proposed.…”
Section: Proposed Methodsmentioning
confidence: 99%
“…The reconstructed neck network contains 5 Concat parallel operations and 5 CSPStage feature fusion modules. Among them, the Concat_1, Concat_2, Con-cat_3, Concat_4, and Concat_5 connection network layers are (10,11), (6,14,15), (4,18), (17,21), and (13,24,25), respectively. Among them, the fusion module CSPStage2 with enhanced feature expression ability outputs feature maps through Concat_3 and Concat_4 respectively, and CSPStage1 is connected to the deep feature map through Concat_5.…”
Section: Neck Network Reconstructionmentioning
confidence: 99%
“…Modern semantic VSLAM systems cannot do without the help of deep learning, and feature attributes and association relations obtained through learning can be used in different tasks [138]. As an important branch of machine learning, deep learning has achieved remarkable results in image recognition [139], semantic understanding [140], image matching [141], 3D reconstruction [142], and other tasks. The application of deep learning in computer vision can greatly ease the problems encountered by traditional methods [143].…”
Section: Semantic Vslammentioning
confidence: 99%