scholarly journals Robust Graph Structure Learning for Multimedia Data Analysis

2021 ◽  
Vol 2021 ◽  
pp. 1-12
Author(s):  
Wei Zhou ◽  
Zhaoxuan Gong ◽  
Wei Guo ◽  
Nan Han ◽  
Shaojie Qiao

With the rapid development of computer network technology, we can acquire a large amount of multimedia data, and it becomes a very important task to analyze these data. Since graph construction or graph learning is a powerful tool for multimedia data analysis, many graph-based subspace learning and clustering approaches have been proposed. Among the existing graph learning algorithms, the sample reconstruction-based approaches have gone the mainstream. Nevertheless, these approaches not only ignore the local and global structure information but also are sensitive to noise. To address these limitations, this paper proposes a graph learning framework, termed Robust Graph Structure Learning (RGSL). Different from the existing graph learning approaches, our approach adopts the self-expressiveness of samples to capture the global structure, meanwhile utilizing data locality to depict the local structure. Specially, in order to improve the robustness of our approach against noise, we introduce l 2 , 1 -norm regularization criterion and nonnegative constraint into the graph construction process. Furthermore, an iterative updating optimization algorithm is designed to solve the objective function. A large number of subspace learning and clustering experiments are carried out to verify the effectiveness of the proposed approach.

2021 ◽  
Author(s):  
Hui Xu ◽  
Liyao Xiang ◽  
Jiahao Yu ◽  
Anqi Cao ◽  
Xinbing Wang

Author(s):  
Yiming Yang ◽  
Abhimanyu Lad ◽  
Henry Shu ◽  
Bryan Kisiel ◽  
Chad Cumby ◽  
...  

2020 ◽  
Vol 52 (3) ◽  
pp. 1793-1809
Author(s):  
Guoqiu Wen ◽  
Yonghua Zhu ◽  
Mengmeng Zhan ◽  
Malong Tan

Author(s):  
Yuting Su ◽  
Wenhui Li ◽  
Anan Liu ◽  
Weizhi Nie

3D model retrieval has been widely utilized in numerous domains, such as computer-aided design, digital entertainment and virtual reality. Recently, many graph-based methods have been proposed to address this task by using multiple views of 3D models. However, these methods are always constrained by the many-to-many graph matching for similarity measure between pair-wise models. In this paper, we propose an hierarchical graph structure learning method (HGS) for 3D model retrieval. The proposed method can decompose the complicated multi-view graph-based similarity measure into multiple single-view graph-based similarity measures. In the bottom hierarchy, we present the method for single-view graph generation and further propose the novel method for similarity measure in single-view graph by leveraging both node-wise context and model-wise context. In the top hierarchy, we fuse the similarities in single-view graphs with respect to different viewpoints to get the multi-view similarity between pair-wise models. In this way, the proposed method can avoid the difficulty in definition and computation in the traditional high-order graph. Moreover, this method is unsupervised and is independent of large-scale 3D dataset for model learning. We conduct extensive evaluation on three popular and challenging datasets. The comparison demonstrates the superiority and effectiveness of the proposed method comparing with the state of the arts. Especially, this unsupervised method can achieve competing performance against the most recent supervised & deep learning method.


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