Volume 1,Issue 9
遥感图像场景下基于深度学习的有色金属低碳循环
利用机制与对策研究
本文旨在探讨在遥感图像场景下,如何应用深度学习技术构建有色金属低碳循环利用的机制,并提出相应的对策,以应对资源枯竭、环境污染和气候变化等挑战,对促进可持续发展具有重要的理论价值和实践意义。
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