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YOLOv11-Safe: An Attention-Enhanced and Explainable Framework for Campus Crisis Detection and Risk Level Prediction

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NIAID Data Ecosystem2026-05-10 收录
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https://figshare.com/articles/dataset/YOLOv11-Safe_An_Attention-Enhanced_and_Explainable_Framework_for_Campus_Crisis_Detection_and_Risk_Level_Prediction/30147325
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资源简介:
Campus environments are increasingly exposed to sudden health incidents, violent conflicts, and abnormal behaviors, which challenge conventional surveillance systems due to their limited real-time performance and interpretability. This study proposes an enhanced YOLOv11-Safe framework that integrates an improved SimAM attention mechanism with a normalized Wasserstein distance (NWD) loss for multi-scenario crisis detection. A dedicated dataset of 2,500 images was constructed, covering seizures, fighting, fainting, vomiting, and wheelchair accidents. Experimental evaluation demonstrates that YOLOv11-Safe achieves a balanced trade-off between accuracy and efficiency while remaining lightweight for deployment. For risk-level prediction, a random forest model with SHAP interpretability analysis identified action frequency as the dominant feature, with event duration and crowd density providing additional contributions. Cross-validated PR and ROC–AUC curves further verified the robustness and generalization ability of the proposed framework. Overall, this work combines deep detection with interpretable risk analysis to provide a reliable basis for intelligent safety management in higher-education institutions.
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2025-09-17
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