Semiautomatic Mapping of Center Pivot Irrigated Areas Using Sentinel-2 Images and GEOBIA Approach

Leandro Guimarães Maranha, Alzir Felippe Buffara Antunes
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Abstract

Image analysis and feature extraction of remoted sensing data are significant for mapping irrigated agriculture areas as a source of information to improve water management and agricultural planning. This paper presents an image segmented base approach GEOBIA (Geographic Object-Based Image Analysis) to extract irrigated areas by Center Pivot Irrigation System (CPIS). This study suggests a semi-automated recognition of circular patterns for the mapping of irrigated regions by center pivots, using Sentinel -2 MSI images, 10 meters spatial resolution. A set of images from different seasons, humid and dry are used to maximize de CPIS’s occurrence. A multiresolution segmentation method was applied, and a large number of segment-based shape features was extracted and used as input to a feature selection procedure (shape descriptors: Area; Compactness; Circularity Factor; Length/Width; Radius of smallest enclosing ellipse; and Roundness). In addition, another shape descriptor “Circularity Factor” was developed in this research and played an important role during preliminaries classification processes. The accuracy assessment of preliminaries classifications has validated used the Circularity Factor together with the other chosen shape descriptors to reach better results to CPIS’s detection. Furthermore, 86.23% of the CPIS mapped in the classification process is in accordance with the ground truth map. This methodology can be used to map large areas in a relatively short time and provides a tool for monitoring irrigated areas.
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基于Sentinel-2和GEOBIA方法的中心支点灌区半自动制图
遥感数据的图像分析和特征提取对于绘制灌溉区地图具有重要意义,可作为改善水资源管理和农业规划的信息来源。提出了一种基于地理目标的图像分割基方法GEOBIA (Geographic Object-Based image Analysis),用于中心支点灌溉系统(CPIS)的灌区提取。本研究建议使用Sentinel -2 MSI图像,10米空间分辨率,通过中心轴对灌溉区的圆形模式进行半自动识别。一组来自不同季节、潮湿和干燥的图像被用来最大限度地提高de CPIS的发生率。采用多分辨率分割方法,提取大量基于分割的形状特征,并将其作为特征选择过程的输入(形状描述符:Area;密实度;循环的因素;长度/宽度;最小围椭圆半径;和圆度)。此外,本研究还提出了另一个形状描述子“圆度因子”,该因子在初步分类过程中发挥了重要作用。将圆度因子与其他选择的形状描述符结合使用,验证了初步分类的准确性评估,可以达到较好的CPIS检测效果。此外,在分类过程中绘制的CPIS与地面真值图的一致性为86.23%。这种方法可以在相对较短的时间内绘制大面积地图,并为监测灌溉区提供了一种工具。
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来源期刊
Anuario do Instituto de Geociencias
Anuario do Instituto de Geociencias Social Sciences-Geography, Planning and Development
CiteScore
0.70
自引率
0.00%
发文量
45
审稿时长
28 weeks
期刊介绍: The Anuário do Instituto de Geociências (Anuário IGEO) is an official publication of the Universidade Federal do Rio de Janeiro (UFRJ – CCMN) with the objective to publish original scientific papers of broad interest in the field of Geology, Paleontology, Geography and Meteorology.
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