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TARDB-Net: triple-attention guided residual dense and BiLSTM networks for hyperspectral image classification

机译:TARDB-NET:用于高光谱图像分类的三重引导剩余密集和BILSTM网络

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摘要

Each sample in the hyperspectral remote sensing image has high-dimensional features and contains rich spatial and spectral information, which greatly increases the difficulty of feature selection and mining. In view of these difficulties, we propose a novel Triple-attention Guided Residual Dense and BiLSTM networks(TARDB-Net) to reduce redundant features while increasing feature fusion capabilities, which ultimately improves the ability to classify hyperspectral images. First, a novel Triple-attention mechanism is proposed to assign different weights to each feature. Then, the residual network is used to perform the residual operation on the features, and the initial features of the multiple residual blocks and the generated deep residual features are intensively fused, retaining a host number of prior features. And use the bidirectional long short-term memory network to integrate the contextual semantics of deep fusion features. Finally, the classification task is completed by Softmax classifier. Experiments on three hyperspectral datasets-Indian Pines, University of Pavia, and Salinas-show that under 10% of the training samples, the overall accuracy of our method is 87%, 96% and 96%, which is superior to several well-known methods.
机译:高光谱遥感图像中的每个样本具有高维特征,包含丰富的空间和光谱信息,这大大增加了特征选择和采矿的难度。鉴于这些困难,我们提出了一种新颖的三重引导剩余密集和BILSTM网络(TARDB-NET),以减少冗余功能,同时增加特征融合能力,最终提高了分类超光谱图像的能力。首先,提出了一种新颖的三重关注机制来为每个特征分配不同的权重。然后,剩余网络用于对特征进行剩余操作,并且多个残差块的初始特征和产生的深度残差特征是强烈的融合,保留主机数的先前特征。并使用双向短期内存网络集成深融合功能的上下文语义。最后,Softmax分类器完成了分类任务。三个高光谱数据集 - 印度松树,帕米亚大学和萨利纳斯的实验 - 表明,在培训样本的10%以下,我们的方法的整体准确性为87%,96%和96%,优于几个众所周知的方法。

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