Dual-graph convolutional network based on band attention and sparse constraint for hyperspectral band selection

2021 ◽  
pp. 107428
Author(s):  
Jie Feng ◽  
Zhanwei Ye ◽  
Shuai Liu ◽  
Xiangrong Zhang ◽  
Jiantong Chen ◽  
...  
2020 ◽  
Vol 12 (12) ◽  
pp. 1963
Author(s):  
Fei Zhou ◽  
Yiquan Wu ◽  
Yimian Dai ◽  
Kang Ni

Small target detection is a critical step in remotely infrared searching and guiding applications. However, previously proposed algorithms would exhibit performance deterioration in the presence of complex background. It is attributed to two main reasons. First, some common background interferences are difficult to eliminate effectively by using conventional sparse measure. Second, most methods only exploit the spatial information typically, but ignore the structural priors across feature space. To address these issues, this paper gives a novel model combining the spatial-feature graph regularization and l1/2-norm sparse constraint. In this model, the spatial and feature regularizations are imposed on the sparse component in the form of graph Laplacians, where the sparse component is enforced as the eigenvectors of their graph Laplacian matrices. Such an approach is to explore the geometric information in both data and feature space simultaneously. Moreover, l1/2-norm acts as a substitute of the traditional l1-norm to constrain the sparse component, further reducing the fake targets. Finally, an efficient optimization algorithm equipped with linearized alternating direction method with adaptive penalty (LADMAP) is carefully designed for model solution. Comprehensive experiments on different infrared scenes substantiate the superiority of the proposed method beyond 11 competitive algorithms in subjective and objective evaluation.


2021 ◽  
Vol 1757 (1) ◽  
pp. 012005
Author(s):  
Yijie Jiang ◽  
Bin Zhou ◽  
Hongkui Tu ◽  
Liqun Gao

Author(s):  
Yuting Wu ◽  
Xiao Liu ◽  
Yansong Feng ◽  
Zheng Wang ◽  
Rui Yan ◽  
...  

Entity alignment is the task of linking entities with the same real-world identity from different knowledge graphs (KGs), which has been recently dominated by embedding-based methods. Such approaches work by learning KG representations so that entity alignment can be performed by measuring the similarities between entity embeddings. While promising, prior works in the field often fail to properly capture complex relation information that commonly exists in multi-relational KGs, leaving much room for improvement. In this paper, we propose a novel Relation-aware Dual-Graph Convolutional Network (RDGCN) to incorporate relation information via attentive interactions between the knowledge graph and its dual relation counterpart, and further capture neighboring structures to learn better entity representations. Experiments on three real-world cross-lingual datasets show that our approach delivers better and more robust results over the state-of-the-art alignment methods by learning better KG representations.


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