A Brief Review of Recent Developments in the Integration of Deep Learning with GIS

Q3 Social Sciences
S. Mohan, Giridhar M.V.S.S
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引用次数: 9

Abstract

The interaction of Deep Learning (DL) methods with Geographical Information System (GIS) provides the opportunity to obtain new insights into environmental processes through the spatial, temporal and spectral resolutions as well as data integration. The two technologies may be connected to form a dynamic system that is incredibly well adapted to the evaluation of environmental conditions through the interrelationships of texture, size, pattern, and process. This perspective has acquired popularity in multiple disciplines. GIS is significantly dependant on processors, particularly for 3D calculations, map rendering, and route calculation whereas DL can process huge amounts of data. DL has received a lot of attention recently as a technology with a plethora of promising results. Furthermore, the growing use of DL methods in a variety of disciplines, including GIS, is evident. This study tries to provide a brief overview of the use of DL methods in GIS. This paper introduces the essential DL concepts relevant to GIS, the majority of which have been published in recent years. This research explores remote sensing applications and technologies in areas such as mapping, hydrological modelling, disaster management, and transportation route planning. Finally, conclusions on contemporary framework methodologies and suggestions for further studies are provided.
深度学习与GIS集成研究进展综述
深度学习(DL)方法与地理信息系统(GIS)的相互作用为通过空间、时间和光谱分辨率以及数据集成获得对环境过程的新见解提供了机会。这两种技术可以连接起来,形成一个动态系统,通过纹理、大小、图案和过程的相互关系,非常好地适应环境条件的评估。这一观点在多个学科中都很受欢迎。GIS在很大程度上依赖于处理器,特别是在3D计算、地图绘制和路线计算方面,而DL可以处理大量数据。最近,深度学习作为一项具有大量前景的技术受到了广泛关注。此外,包括地理信息系统在内的各种学科越来越多地使用DL方法,这是显而易见的。本研究试图提供在GIS中使用DL方法的简要概述。本文介绍了与GIS相关的基本DL概念,其中大部分是近年来发表的。本研究探讨了遥感在测绘、水文建模、灾害管理和交通路线规划等领域的应用和技术。最后,对当前框架方法进行了总结,并提出了进一步研究的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Geomatics and Environmental Engineering
Geomatics and Environmental Engineering Earth and Planetary Sciences-Computers in Earth Sciences
CiteScore
2.30
自引率
0.00%
发文量
27
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