Urban traffic accidents result in significant casualties and property losses. Conducting traffic risk mapping and inference for urban areas provides substantial benefits for accident prevention as well as future planning and governance. However, pixel-level fine-grained inference of urban traffic risk maps remains challenging, primarily due to the complex layout of urban road networks, the temporal variability of traffic dynamics, and the heterogeneity of spatial semantic information. In this study, we propose an end-to-end Context-Aware Risk Feature Perception and Inference Network (CRFPI-Net) based on multimodal data to achieve fine-grained inference of urban traffic risk maps. In CRFPI-Net, three separate branches are designed to capture risk features from satellite remote sensing imagery, spatiotemporal traffic sequences, and area-of-interest (AOI) semantic information. The risk-aware features from each branch are integrated using a gated fusion mechanism to eliminate redundant information, and the fused features are further processed by context-aware multi-scale correlation analysis to reduce the adverse impact of heterogeneous variations in risk regions on risk perception. Finally, CRFPI-Net produces pixel-level inference maps of urban traffic accident risk, enabling effective and low-cost guidance for traffic accident prevention. The proposed model is quantitatively evaluated on real-world datasets and achieves state-of-the-art performance. Ablation experiments further demonstrate the rationality and effectiveness of the designed modules. The code and pretrained models for urban traffic risk mapping are publicly available at https://github.com/gwt-ZJU/CRFPI-Net.
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