Crop Field Boundary Delineation using Historical Crop Rotation Pattern

M. S. Rahman, L. Di, Zhiqi Yu, E. Yu, Junmei Tang, Li Lin, Chen Zhang, Juozas Gaigalas
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引用次数: 6

Abstract

GIS data layer on crop field boundary has many applications in agricultural research, ecosystem study, crop monitoring, and land management. Crop field boundary mapping through field survey is not time and cost effective for vast agriculture areas. Onscreen digitization on fine-resolution satellite image is also labor-intensive and error-prone. The recent development in image segmentation based on their spectral characteristics is promising for cropland boundary detection. However, processing of large volume multi-band satellite images often required high-performance computation systems. This study utilized crop rotation information for the delineation of field boundaries. In this study, crop field boundaries of Iowa in the United States are extracted using multi-year (2007-2018) CDL data. The process is simple compared to boundary extraction from multi-date remote sensing data. Although this process was unable to distinguish some adjacent fields, the overall accuracy is promising. Utilization of advanced geoprocessing algorithms and tools on polygon correction may improve the result significantly. Extracted field boundaries are validated by superimposing on fine resolution Google Earth images. The result shows that crop field boundaries can easily be extracted with reasonable accuracy using crop rotation information.
利用历史作物轮作模式划定农田边界
农田边界GIS数据层在农业研究、生态系统研究、作物监测和土地管理等方面有着广泛的应用。对广大农业区来说,通过实地调查来绘制农田边界既不省时又不经济。对高分辨率卫星图像进行屏幕数字化处理也是一项费力且容易出错的工作。近年来基于其光谱特征的图像分割技术的发展为农田边界检测提供了良好的前景。然而,处理大容量多波段卫星图像往往需要高性能的计算系统。本研究利用作物轮作信息划定农田边界。在本研究中,使用多年(2007-2018)CDL数据提取了美国爱荷华州的农田边界。与从多数据遥感数据中提取边界相比,该过程简单。虽然这个过程不能区分一些相邻的区域,但总体精度是有希望的。利用先进的地理处理算法和工具进行多边形校正可以显著改善结果。提取的场边界通过叠加在精细分辨率的Google Earth图像上进行验证。结果表明,利用作物轮作信息可以很容易地提取出具有合理精度的农田边界。
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