Stgcn-pad: a spatial-temporal graph convolutional network for detecting abnormal pedestrian motion patterns at grade crossings
Ge Song,
Yu Qian,
Yi Wang
Abstract: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 s… Show more
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