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Multi-scale attentive region adaptive aggregation learning for remote sensing scene classification

机译:遥感场景分类的多尺度细分区域自适应聚合学习

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摘要

Remote sensing scene classification (RSSC) is an active topic in the field of remote sensing and has attracted a lot of attention due to its wide range of applications. Deep learning methods, especially Convolutional neural networks (CNN), significantly improve the performance of RSSC due to their strong feature extraction capabilities. However, the complicated spatial layout and diverse target distribution of remote sensing images make RSSC challenging. Current CNN usually tends to describe the global semantics of high-level features of images, but the extraction of local semantics, multi-scale features and anisotropic contextual features in remote sensing images needs to be enhanced to cope with the above challenges. To this end, an end-to-end hybrid structure, namely multi-scale attentive region adaptive aggregation (MARAA) learning is proposed, which makes full use of the rich semantic information of deep convolutional features and the high robustness of local adaptive aggregation. First, we extract spatial feature maps based on different layers of CNN, so that our feature extractor can learn multi-scale semantic representations. Second, an attention-enhanced local adaptive aggregation learning strategies is designed to aggregate the spatial features of each scale. Not only the dual attention is utilized to enhance the semantic features of local regions but also the local regions is divided into groups and the different orders of spatial adaptive aggregation learning based on hierarchical attention is designed to explore arbitrary contexts of local semantics. Subsequently, a context gating mechanism of sparse fusion is proposed to merge the adaptive aggregation features of local semantics of different scale spaces, so as to explore the advantages of cross-scale feature fusion. Finally, experiments on five publicly available RSSC benchmarks show that the classification performance of our MARAA significantly outperforms many state-of-the-art methods by capturing deep adaptive internal correlations of multi-scale attentive regions of the image.
机译:遥感场景分类(RSSC)是遥感领域的活动主题,并且由于其广泛的应用而引起了很多关注。深度学习方法,特别是卷积神经网络(CNN),由于其强大的特征提取能力,显着提高了RSSC的性能。然而,遥感图像的复杂的空间布局和多样的目标分布使RSSC具有挑战性。目前的CNN通常倾向于描述图像的高级特征的全局语义,但需要提高遥感图像中的局部语义,多尺度特征和各向异性上下文特征,以应对应对上述挑战。为此,提出了一种端到端的混合结构,即多规模的细节区域自适应聚集(MARAA)学习,这充分利用了深度卷积特征的丰富语义信息和局部自适应聚集的高稳健性。首先,我们基于CNN的不同层提取空间特征映射,因此我们的特征提取器可以学习多尺度语义表示。其次,注意力增强的本地自适应聚合学习策略旨在聚合每种比例的空间特征。不仅有利用双重关注来增强本地地区的语义特征,而且局部地区分为基于分层关注的不同空间自适应学习的不同阶数旨在探讨局部语义的任意上下文。随后,提出了一种稀疏融合的上下文门控机制,以合并不同刻度空间的局部语义的自适应聚合特征,以探讨跨尺度特征融合的优点。最后,五个公开可用的RSSC基准测试表明,通过捕获图像的多尺度细节区域的深度自适应内部相关性,我们的MARAA的分类性能显着优于许多最先进的方法。

著录项

  • 来源
    《International journal of remote sensing》 |2021年第20期|7742-7776|共35页
  • 作者单位

    Dalian Maritime Univ Coll Informat Sci & Technol Dalian 116026 Peoples R China;

    Dalian Maritime Univ Coll Informat Sci & Technol Dalian 116026 Peoples R China;

    Dalian Maritime Univ Coll Informat Sci & Technol Dalian 116026 Peoples R China;

    Dalian Maritime Univ Coll Informat Sci & Technol Dalian 116026 Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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