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      TMNet: A Two-Branch Multi-Scale Semantic Segmentation Network for Remote Sensing Images.

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          Abstract

          Pixel-level information of remote sensing images is of great value in many fields. CNN has a strong ability to extract image backbone features, but due to the localization of convolution operation, it is challenging to directly obtain global feature information and contextual semantic interaction, which makes it difficult for a pure CNN model to obtain higher precision results in semantic segmentation of remote sensing images. Inspired by the Swin Transformer with global feature coding capability, we design a two-branch multi-scale semantic segmentation network (TMNet) for remote sensing images. The network adopts the structure of a double encoder and a decoder. The Swin Transformer is used to increase the ability to extract global feature information. A multi-scale feature fusion module (MFM) is designed to merge shallow spatial features from images of different scales into deep features. In addition, the feature enhancement module (FEM) and channel enhancement module (CEM) are proposed and added to the dual encoder to enhance the feature extraction. Experiments were conducted on the WHDLD and Potsdam datasets to verify the excellent performance of TMNet.

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          Author and article information

          Journal
          Sensors (Basel)
          Sensors (Basel, Switzerland)
          MDPI AG
          1424-8220
          1424-8220
          Jun 26 2023
          : 23
          : 13
          Affiliations
          [1 ] School of Computer and Information Engineering, Inner Mongolia Agricultural University, Hohhot 010011, China.
          [2 ] Inner Mongolia Autonomous Region Key Laboratory of Big Data Research and Application of Agriculture and Animal Husbandry, Hohhot 750306, China.
          [3 ] College of Water Conservancy and Civil Engineering, Inner Mongolia Agricultural University, Hohhot 010018, China.
          [4 ] Key Laboratory of Water Resources Protection and Utilization of Inner Mongolia Autonomous Region, Hohhot 750306, China.
          [5 ] Institute of Grassland Research of CAAS, Hohhot 010013, China.
          Article
          s23135909
          10.3390/s23135909
          10346442
          37447759
          5d28e58b-7b8f-464b-a9dc-44c4d4a96b89
          History

          global modeling,remote sensing images,semantic segmentation,Swin transformer

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