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Data augmentation method for abnormal elevator passenger behaviors based on dynamic graph convolutional network
Shixiong KUANG, Junbo YAO, Jiawei LU, Qibing WANG, Gang XIAO
Journal of Computer Applications    2025, 45 (10): 3187-3194.   DOI: 10.11772/j.issn.1001-9081.2024101445
Abstract74)   HTML0)    PDF (3930KB)(29)       Save

The problems of low accuracy and poor generalization performance in recognizing abnormal behaviors of elevator passengers are due to the lack of sufficient diverse abnormal behavior data. To address these issues, a Dynamic Graph Convolutional Network-based Behavior data Augmentation (DGCN-BA) method was proposed. Firstly, a dynamic graph convolutional network was constructed to capture spatial relationships and motion correlations among different human joints in the behaviors of elevator passengers. Secondly, these features were utilized to enhance pose data, thereby generating richer and more reasonable pose sequences. Finally, the pose sequences were used to construct human actions in a virtual elevator scene, and lot of abnormal behavior video data for elevator passengers were generated. To validate the effectiveness of DGCN-BA, experiments were conducted on public datasets Human3.6M, 3DHP, MuPoTS-3D, and a self-constructed dataset. Experimental results show that compared to data augmentation methods JMDA (Joint Mixing Data Augmentation) and DDPMs (Denoising Diffusion Probabilistic Models), DGCN-BA reduces the Mean Per Joint Position Error (MPJPE) on the Human3.6M dataset by 2.9 mm and 1.5 mm, respectively. It can be seen that DGCN-BA can complete pose estimation tasks more effectively, generates diverse and reasonable abnormal behavior data, and improves the recognition effect of video-based elevator passenger abnormal behaviors significantly.

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Color image segmentation based on graph theory and uniformity measurement
HUANG Shan-shan ZHANG Yong-liang XIAO Gang XIAO Jian-wei ZHANG Shen-xu
Journal of Computer Applications    2012, 32 (06): 1529-1531.   DOI: 10.3724/SP.J.1087.2012.01529
Abstract1067)      PDF (706KB)(615)       Save
Efficient Graph-Based algorithm is a novel image segmentation method based on graph theory and it can segment an image at an extraordinary speed. However, it is easily influenced by the threshold value and the segmentation result is imprecise when dealing with the border and texture. Here, an improved algorithm is proposed, which has three main contributions: 1) RGB color space is replaced by Lab color space; 2) Laplacian operator is used to divide the edges of weighted graph into border edges and non-border edges, and those non-border edges are given priority; 3) the optimum threshold is evaluated based on uniformity measurement. Experimental results show that the improved algorithm is more accurate and adaptive than traditional Graph-based algorithms, and segmentation results are closer to human vision property.
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