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Remote Sensing Scene Classification via Multi-Branch Local Attention Network

Chen, Si-Bao ; Wei, Qing-Song ; Wang, Wen-Zhong ; Tang, Jin ; Luo, Bin ; Wang, Zu-Yuan

IEEE transactions on image processing, 2022, Vol.31, p.99-109 [Periódico revisado por pares]

United States: IEEE

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  • Título:
    Remote Sensing Scene Classification via Multi-Branch Local Attention Network
  • Autor: Chen, Si-Bao ; Wei, Qing-Song ; Wang, Wen-Zhong ; Tang, Jin ; Luo, Bin ; Wang, Zu-Yuan
  • Assuntos: Algorithms ; Artificial neural networks ; attention mechanism ; Classification ; Convolutional neural networks ; Deep learning ; Feature extraction ; Image classification ; Image color analysis ; Modules ; Neural networks ; Neural Networks, Computer ; Object recognition ; Remote sensing ; Remote Sensing Technology ; Representations ; scene classification ; Sensors ; Visualization
  • É parte de: IEEE transactions on image processing, 2022, Vol.31, p.99-109
  • Notas: ObjectType-Article-1
    SourceType-Scholarly Journals-1
    ObjectType-Feature-2
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  • Descrição: Remote sensing scene classification (RSSC) is a hotspot and play very important role in the field of remote sensing image interpretation in recent years. With the recent development of the convolutional neural networks, a significant breakthrough has been made in the classification of remote sensing scenes. Many objects form complex and diverse scenes through spatial combination and association, which makes it difficult to classify remote sensing image scenes. The problem of insufficient differentiation of feature representations extracted by Convolutional Neural Networks (CNNs) still exists, which is mainly due to the characteristics of similarity for inter-class images and diversity for intra-class images. In this paper, we propose a remote sensing image scene classification method via Multi-Branch Local Attention Network (MBLANet), where Convolutional Local Attention Module (CLAM) is embedded into all down-sampling blocks and residual blocks of ResNet backbone. CLAM contains two submodules, Convolutional Channel Attention Module (CCAM) and Local Spatial Attention Module (LSAM). The two submodules are placed in parallel to obtain both channel and spatial attentions, which helps to emphasize the main target in the complex background and improve the ability of feature representation. Extensive experiments on three benchmark datasets show that our method is better than state-of-the-art methods.
  • Editor: United States: IEEE
  • Idioma: Inglês

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