A Systematic Review of Machine Learning Applications in Land Use Land Cover Change Detection using Remote Sensing

Sumangala N., Shashidhar Kini
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Abstract

Background/Purpose: The objective of this literature review is to explore different land use and land cover methods using machine learning techniques and also their applications in change detection. Reviewing various methods adopted in this domain opens up a new path for taking up further research by extending the current approaches. Design/Methodology/Approach: The research findings presented in various scholarly articles are collected from secondary resources including scholarly journal publications. These articles are analyzed, and the interpretations are highlighted in this review paper. Findings/Result: This research provides insight into various techniques used to classify remote sensing imagery. The gaps identified during the analysis with different approaches have helped to get a clear picture when formulating research questions in the remote sensing geographic information systems domain. Research limitations/implications: This study has surveyed various applications of remote sensing in GIS. This study is limited to a review of the various machine-learning approaches used for implementing change detection. The various deep learning architectures for image classification could be further explored. Originality/Value: The articles selected for review in this study are from scholarly research journals and are cited by other authors in their publications. The papers selected for review are relevant to the research work and research proposal presented in this paper. Paper Type: Literature review paper.
机器学习在土地利用、土地覆盖变化遥感检测中的应用综述
背景/目的:本文献综述的目的是探讨利用机器学习技术的不同土地利用和土地覆盖方法及其在变化检测中的应用。回顾这一领域所采用的各种方法,可以通过对现有方法的扩展,为进一步开展研究开辟一条新的途径。设计/方法/方法:各种学术文章中的研究成果收集自包括学术期刊出版物在内的二手资源。本文对这些文章进行了分析,并对其进行了重点解读。发现/结果:本研究提供了对用于遥感图像分类的各种技术的见解。在用不同方法进行分析期间发现的差距有助于在制定遥感地理信息系统领域的研究问题时获得清晰的画面。研究局限/启示:本研究考察了遥感在GIS中的各种应用。本研究仅限于对用于实施变更检测的各种机器学习方法的回顾。各种用于图像分类的深度学习架构可以进一步探索。原创性/价值:本研究中选择的文章来自学术研究期刊,并被其他作者在其出版物中引用。所选论文均与本文的研究工作和研究计划相关。论文类型:文献综述论文。
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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