Unsupervised RGB-T saliency detection by node classification distance and sparse constrained graph learning

Author(s):  
Aojun Gong ◽  
Liming Huang ◽  
Jiashun Shi ◽  
Chuang Liu
2020 ◽  
pp. 1-1
Author(s):  
Bo Jiang ◽  
Xingyue Jiang ◽  
Jin Tang ◽  
Bin Luo

2018 ◽  
Vol 312 ◽  
pp. 239-250 ◽  
Author(s):  
Xinzhong Zhu ◽  
Chang Tang ◽  
Pichao Wang ◽  
Huiying Xu ◽  
Minhui Wang ◽  
...  

2020 ◽  
Vol 22 (1) ◽  
pp. 160-173 ◽  
Author(s):  
Zhengzheng Tu ◽  
Tian Xia ◽  
Chenglong Li ◽  
Xiaoxiao Wang ◽  
Yan Ma ◽  
...  

2021 ◽  
Vol 2021 ◽  
pp. 1-10
Author(s):  
Wu-Lue Yang ◽  
Xiao-Ze Chen ◽  
Xu-Hua Yang

At present, the graph neural network has achieved good results in the semisupervised classification of graph structure data. However, the classification effect is greatly limited in those data without graph structure, incomplete graph structure, or noise. It has no high prediction accuracy and cannot solve the problem of the missing graph structure. Therefore, in this paper, we propose a high-order graph learning attention neural network (HGLAT) for semisupervised classification. First, a graph learning module based on the improved variational graph autoencoder is proposed, which can learn and optimize graph structures for data sets without topological graph structure and data sets with missing topological structure and perform regular constraints on the generated graph structure to make the optimized graph structure more reasonable. Then, in view of the shortcomings of graph attention neural network (GAT) that cannot make full use of the graph high-order topology structure for node classification and graph structure learning, we propose a graph classification module that extends the attention mechanism to high-order neighbors, in which attention decays according to the increase of neighbor order. HGLAT performs joint optimization on the two modules of graph learning and graph classification and performs semisupervised node classification while optimizing the graph structure, which improves the classification performance. On 5 real data sets, by comparing 8 classification methods, the experiment shows that HGLAT has achieved good classification results on both a data set with graph structure and a data set without graph structure.


Author(s):  
Han Liu ◽  
Bo Li ◽  
Tao Zheng ◽  
Jiaxu Yao
Keyword(s):  

Author(s):  
M. N. Favorskaya ◽  
L. C. Jain

Introduction:Saliency detection is a fundamental task of computer vision. Its ultimate aim is to localize the objects of interest that grab human visual attention with respect to the rest of the image. A great variety of saliency models based on different approaches was developed since 1990s. In recent years, the saliency detection has become one of actively studied topic in the theory of Convolutional Neural Network (CNN). Many original decisions using CNNs were proposed for salient object detection and, even, event detection.Purpose:A detailed survey of saliency detection methods in deep learning era allows to understand the current possibilities of CNN approach for visual analysis conducted by the human eyes’ tracking and digital image processing.Results:A survey reflects the recent advances in saliency detection using CNNs. Different models available in literature, such as static and dynamic 2D CNNs for salient object detection and 3D CNNs for salient event detection are discussed in the chronological order. It is worth noting that automatic salient event detection in durable videos became possible using the recently appeared 3D CNN combining with 2D CNN for salient audio detection. Also in this article, we have presented a short description of public image and video datasets with annotated salient objects or events, as well as the often used metrics for the results’ evaluation.Practical relevance:This survey is considered as a contribution in the study of rapidly developed deep learning methods with respect to the saliency detection in the images and videos.


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