Crop type classification and spatial mapping in River Nile and Northern State, Sudan, using Sentinel-2 satellite data and field observation

Q3 Social Sciences
Emad H. E. Yasin, Mahir M. Sharif, Mahadi Y. A. Yahia, A. Y. Othman, Ashraf O. Ibrahim, M. A. Kheiry, Mazin Musa
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引用次数: 0

Abstract

Maintaining productive farmland necessitates precise crop mapping and identification. While satellite remote sensing makes it possible to generate such maps, there are still issues to resolve, such as how to choose input data and the best classifier algorithm, especially in areas with scarce field data. Accurate assessments of the land used for farming are a crucial part of national food supply and production accounting in many African countries, and to this end, remote sensing tools are being increasingly put to use. The aim of this study was to assess the potentiality of Sentinel-2 to distinguish and discriminate crop species in the study area and constraints on accurately mapping cropping patterns in the winter season in River Nile and Northern State, Sudan. The research utilized Sentinel-2 Normalized Different Vegetation Index (NDVI) at 10 m resolution, unsupervised and supervised classification method with ground sample and accuracy assessment. The results of the study found that the signatures of grain sorghum, wheat, okra, Vicia faba, alfalfa, corn, haricot, onion, potato, tomato, lupine, tree cover, and garlic have clear distinctions, permitting an overall accuracy of 87.38%, with trees cover, onion, wheat, potato, garlic, alfalfa, tomato, lupine and Vicia faba achieving more than 87% accuracy. Major mislabeling problems occurred primarily in irrigated areas for grain sorghum, okra, corn, and haricot, in wooded areas comprised of small parcels of land. The research found that high-resolution temporal images combined with ground data had potential and utility for mapping cropland at the field scale in the winter.
利用哨兵-2 号卫星数据和实地观测,对苏丹尼罗河和北部州的作物类型进行分类并绘制空间分布图
要保持农田高产,就必须对作物进行精确绘图和识别。虽然卫星遥感使生成此类地图成为可能,但仍有一些问题需要解决,如如何选择输入数据和最佳分类算法,特别是在实地数据稀缺的地区。在许多非洲国家,对农耕用地的准确评估是国家粮食供应和生产核算的重要组成部分,为此,遥感工具正得到越来越多的应用。本研究的目的是评估哨兵-2 在区分和鉴别研究区域作物种类方面的潜力,以及在准确绘制苏丹尼罗河和北方州冬季耕作模式图方面的制约因素。研究采用了分辨率为 10 米的哨兵-2 归一化不同植被指数(NDVI)、无监督和有监督分类方法以及地面样本和精度评估。研究结果发现,谷物高粱、小麦、秋葵、紫花苜蓿、玉米、哈里科、洋葱、马铃薯、番茄、羽扇豆、树木植被和大蒜的特征具有明显的区别,总体准确率达到 87.38%,其中树木植被、洋葱、小麦、马铃薯、大蒜、紫花苜蓿、番茄、羽扇豆和紫花苜蓿的准确率超过 87%。主要的误标问题主要发生在灌溉区的谷物高粱、秋葵、玉米和哈里科,以及由小块土地组成的林区。研究发现,高分辨率时空图像与地面数据相结合,在冬季绘制田间尺度的耕地地图方面具有潜力和实用性。
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来源期刊
Journal of Degraded and Mining Lands Management
Journal of Degraded and Mining Lands Management Environmental Science-Nature and Landscape Conservation
CiteScore
1.50
自引率
0.00%
发文量
81
审稿时长
4 weeks
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