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A non-local capsule neural network for hyperspectral remote sensing image classification

机译:用于高光谱遥感图像分类的非本地胶囊神经网络

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摘要

In this study, we introduce a non-local block of the attention mechanism into capsule neural network (CapsNet) to form a non-local capsule network (NLCapsNet) for hyperspectral remote sensing image (HSI) classification. The presented NLCapsNet uses global information from input images and has a powerful representation of the capacity and spatial relationships among HSI features. It can effectively isolate invalid information and consolidate valid information, in addition to learning more representative features and capturing the long-distance dependencies of HSIs with only a few layers. An additional convolutional layer is embedded before the capsule layers to capture high-level features and speed up the routing procedure. The proposed method can effectively enhance the classification accuracy with a rapid convergence speed and avoid overfitting when the number of training samples is limited. The NLCapsNet performs well on the classification of the Kennedy Space Center, Pavia University and Salinas datasets.
机译:在这项研究中,我们将注意力机制的非本地块介绍到胶囊神经网络(CAPSNET)中,以形成用于高光谱遥感图像(HSI)分类的非本地胶囊网络(NLCAPSNET)。呈现的NLCAPSNET使用来自输入图像的全局信息,并具有强大的HSI功能中容量和空间关系的表示。除了学习更多代表性的功能之外,它还可以有效地隔离无效信息并巩固有效信息,并仅用几层捕获HSI的长距离依赖性。在胶囊层之前嵌入另外的卷积层,以捕获高级功能并加快路由程序。所提出的方法可以通过快速收敛速度有效地提高分类精度,并且当训练样本的数量有限时避免过度拟合。 NLCAPSNET在肯尼迪航天中心,帕维亚大学和Salinas数据集的分类上表现良好。

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