From Digitalized to Intelligentized Surveying and Mapping: Fundamental Issues and Research Agenda
Jun CHEN,Zhilin LI,Songnian LI,Wanzeng LIU,Hao WU,Li YAN. From Digitalized to Intelligentized Surveying and Mapping: Fundamental Issues and Research Agenda[J]. Journal of Geodesy and Geoinformation Science, 2022, 5(2): 148-160.
Nowadays Surveying and Mapping (S&M) production and services are facing some serious challenges such as real-timization of data acquisition, automation of information processing, and intellectualization of service applications. The main reason is that current digitalized S&M technologies, which involve complex algorithms and models as the core, are incapable of completely describing and representing the diverse, multi-dimensional and dynamic real world, as well as addressing high-dimensional and nonlinear spatial problems using simple algorithms and models. In order to address these challenges, it is necessary to explore the use of natural intelligence in S&M, and to develop intelligentized S&M technologies, which are knowledge-guided and algorithm-based. This paper first discusses the basic concepts and ideas of intelligentized S&M, and then analyzes and defines its fundamental issues in the analysis and modeling of natural intelligence in S&M, the construction and realization of hybrid intelligent computing paradigm, and the mechanism and path of empowering production. Further research directions are then proposed in the four areas, including knowledge systems, technologies and methodologies, application systems, and instruments and equipments of intelligentized S&M. Finally, some institutional issues related to promoting scientific research and engineering applications in this area are discussed.
Surveying and Mapping; intelligentization; natural intelligence; hybrid intelligent computing
🔷Authors l 作者
Jun CHEN,Zhilin LI,Songnian LI,Wanzeng LIU,Hao WU,Li YAN.
🔷全文摘录如下
本文选自JGGS 2022, Volume 5, Issue 2, P148-160。Map Approval Number(审图号):GS京(2022)0342。点击阅读原文即可下载。
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