Stgcn-pad: a spatial-temporal graph convolutional network for detecting abnormal pedestrian motion patterns at grade crossings


연구 분야: Networking



학회: Pattern Analysis and Applications


초록

This paper presents a Spatial-Temporal Graph Convolutional Network-based Pedestrians’ behaviors Anomaly Detection system (STGCN-PAD) for grade crossings. The behaviors of pedestrians are represented in a structured manner by skeleton trajectories that are generated using a pose estimation model. The ST-GCN components are sequentially applied to capture the spatial dependencies between skeleton key points within a single video frame and the temporal relationships for each of them. Based on these features, the system reconstructs input trajectories with a constant sliding window size, and the reconstruction error is used to distinguish abnormal behaviors from those normal. To accelerate the processing of extracted multi-dimensional feature maps, an MLP-Mixer model-based reconstruction network is developed as an alternative to the traditional convolution neural network. Only trajectories of normal walking behavior are included for model training. Anomalies, such as lingering and squatting activities, can be identified as outliers by observing the magnitude of reconstruction errors. The case studies demonstrate the salient feasibility and efficiency of the proposed system, which achieves at least comparable performance (approximately 88% in the AUC evaluation metric) with several state-of-the-art approaches while using the MLP-Mixer model accelerates model inference by 10× relative to our previous effort (Song et al. in Appl Intell 53:21676–21691, 2023).


Author Profile
Ge Song

Department of Mechanical Engineering University of South Carolina Columbia SC 29208 USA

Seychelles
Author Profile
Yu Qian

Department of Civil and Environmental Engineering University of South Carolina Columbia SC 29208 USA

Andorra
Author Profile
Yi Wang

Department of Mechanical Engineering University of South Carolina Columbia SC 29208 USA

Seychelles

📄 논문 정보

발행 연도 2024년
인용수 0
출판 국가 Seychelles, Andorra
사이트 Springer
좋아요 수 0

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