FireSentry: A Multi-Modal Spatio-temporal Benchmark Dataset for Fine-Grained Wildfire Spread Forecasting

arXiv — cs.CVThursday, December 4, 2025 at 5:00:00 AM
  • FireSentry has been introduced as a multi-modal dataset designed for fine-grained wildfire spread forecasting, utilizing sub-meter spatial and sub-second temporal resolution data collected via UAV platforms. This dataset includes visible and infrared video streams, environmental measurements, and validated fire masks, addressing the limitations of existing coarse-scale models that rely on low-resolution satellite data.
  • The development of FireSentry is significant as it enhances the precision of wildfire spread predictions, which is crucial for improving emergency response strategies and decision-making processes in wildfire management. This advancement could lead to more effective resource allocation and risk mitigation during wildfire events.
  • This initiative reflects a broader trend in artificial intelligence and remote sensing, where the integration of high-resolution datasets and advanced modeling techniques is becoming essential for tackling complex environmental challenges. The emphasis on fine-grained data and innovative modeling approaches aligns with ongoing efforts to enhance predictive capabilities across various domains, including autonomous systems and disaster response.
— via World Pulse Now AI Editorial System

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