On Satellite Imagery of Land Cover Classification for Agricultural Development

Ali Abdullah M. Alzahrani, Al-Amin Bhuiyan
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Abstract

Distribution of chronological land cover modifications has attained a vibrant concern in contemporary sustainability research. Information delivered by satellite remote sensing imagery plays momentous role in enumerating and discovering the expected land cover for vegetation. Fuzzy clustering has been found successful in implementing a significant number of optimization problems associated with machine learning due to its fractional membership degrees in several neighbouring constellations. This research establishes a framework on land cover classification for agricultural development. The approach is focused on object-oriented classification and is organized with a Fuzzy c-means clustering over segmentation on CIE L*a*b* colour scheme which provides analysis of vegetation coverage and enhances land planning for sustainable developments. This research investigates the land cover variations of the eastern province of Saudi Arabia throughout an elongated span of period from 1984 to 2018 to recognize the possible roles of the land cover alterations on farming. The Landsat satellite imagery and Geographical Information System (GIS), in tandem with Google Earth chronological imagery are employed for land use variation analysis. Experimental results exhibit a reasonable spread in the cultivated zones and reveal that this Colour Segmented Fuzzy Clustering (CSFC) strategy achieves better than the relevant counterpart approaches considering classification accuracy.
基于农业开发的土地覆盖分类卫星影像研究
土地覆盖变化的时序分布已成为当代可持续发展研究的热点。卫星遥感影像所提供的信息在计算和发现预期的植被覆盖面积方面发挥着重要作用。由于模糊聚类在几个相邻星座中的分数隶属度,它已经成功地实现了与机器学习相关的大量优化问题。本研究建立了农业发展的土地覆盖分类框架。该方法侧重于面向对象的分类,并在CIE L*a*b*配色方案上使用模糊c均值聚类进行组织,该方案提供了植被覆盖分析并增强了可持续发展的土地规划。本研究调查了1984年至2018年沙特阿拉伯东部省份的土地覆盖变化,以认识土地覆盖变化对农业的可能作用。利用陆地卫星图像和地理信息系统(GIS)以及谷歌地球年代图进行土地利用变化分析。实验结果表明,该方法在耕地范围内具有合理的分布,在分类精度方面优于同类方法。
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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