金诗程, 高绵新, 马晓黎, 黄习艺, 晏梓寰. 面向业务的自然资源智能解译样本分类研究与实践[J]. 华南师范大学学报(自然科学版), 2023, 55(6): 88-97. doi: 10.6054/j.jscnun.2023082
引用本文: 金诗程, 高绵新, 马晓黎, 黄习艺, 晏梓寰. 面向业务的自然资源智能解译样本分类研究与实践[J]. 华南师范大学学报(自然科学版), 2023, 55(6): 88-97. doi: 10.6054/j.jscnun.2023082
JIN Shicheng, GAO Mianxin, MA Xiaoli, HUANG Xiyi, YAN Zihuan. Research and Practice of Business-oriented Natural Resource Intelligent Interpretation Sample Classification[J]. Journal of South China Normal University (Natural Science Edition), 2023, 55(6): 88-97. doi: 10.6054/j.jscnun.2023082
Citation: JIN Shicheng, GAO Mianxin, MA Xiaoli, HUANG Xiyi, YAN Zihuan. Research and Practice of Business-oriented Natural Resource Intelligent Interpretation Sample Classification[J]. Journal of South China Normal University (Natural Science Edition), 2023, 55(6): 88-97. doi: 10.6054/j.jscnun.2023082

面向业务的自然资源智能解译样本分类研究与实践

Research and Practice of Business-oriented Natural Resource Intelligent Interpretation Sample Classification

  • 摘要: 深度学习是当代人工智能发展的核心技术,基于深度学习的自然资源要素智能解译已然成为热门研究课题,为实现深度学习技术在自然资源监测监管方面的工程化应用,亟需以业务为导向进行样本分类,建设服务于自然资源管理的智能解译样本库。文章首先对智能解译任务和样本集分类现状进行分析,提出样本数据集分类存在的问题;然后,基于现有数据基础、自然资源分类体系和自然资源管理业务需求,提出了面向业务的自然资源智能解译样本分类方法;其次,按4种解译任务进行样本的分类; 最后,以广东省为例,开展样本分类实践, 实践结果表明该方法具有一定的可行性,并能有效应用于广东省自然资源综合解译样本库建设。

     

    Abstract: Deep learning is the core technology of the development of contemporary artificial intelligence, and inte-lligent interpretation of natural resource elements based on deep learning has become a hot research topic. In order to realize the engineering application of deep learning technology in natural resource monitoring and supervision, it is urgent to conduct business-oriented sample classification and build an intelligent interpretation sample database serving natural resource management. In this paper, firstly, the current status of intelligent interpretation tasks and sample set classification were analyzed, and the problems in sample dataset classification were pointed out. Then, based on the existing data foundation, natural resource classification system, and business requirements of natural resource management, a business-oriented intelligent interpretation sample classification method for natural resources was proposed. Next, samples were classified according to four interpretation tasks. Finally, taking Guangdong as an example, a sample classification practice was conducted, and the results showed that this method is feasible and can be effectively used for the construction of a comprehensive interpretation sample library for natural resources in Guangdong Province.

     

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