Urban Fire Situation Forecasting: Deep sequence learning with spatio-temporal dynamics
Guangyin Jin(National University of Defense Technology), Xingchen Hu(National University of Defense Technology), Cunchao Zhu(National University of Defense Technology), Yanghe Feng(National University of Defense Technology), Qi Wang(National University of Defense Technology), Jincai Huang(National University of Defense Technology)
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