通过在谷歌地球引擎平台上使用轨道多传感器进行面向地理对象的分析来探测玉米作物

Ismael Cavalcante Maciel Junior, R. Dallacort, Cácio Luiz Boechat, P. Teodoro, L. P. Teodoro, F. Rossi, J. F. Oliveira‐Júnior, João Lucas Della-Silva, F. Baio, Mendelson Lima, C. A. S. Silva Junior
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引用次数: 0

摘要

马托格罗索州是巴西最大的玉米生产地,种植主要集中在第二季。由于需要获得更准确、更有效的数据,农业情报部门正在调整和采用新技术,如使用卫星遥感和地理信息系统。在这方面,本研究旨在通过使用不同空间、光谱和时间分辨率的基于地理对象的图像分析(GEOBIA),绘制 2019/2020 农作物年度卡纳拉纳-MT 的二季玉米种植区地图。本次评估使用了 MSI/Sentinel-2、OLI/Landsat-8、MODIS-Terra 和 MODIS-Aqua 以及 PlanetScope 图像。玉米作物绘图以巴西地理统计局(IBGE)和谷歌地球引擎(GEE)提供的制图基础为依据,并经过以下步骤:图像过滤(灰度共现矩阵-GLCM)、植被指数计算、简单非迭代聚类(SNIC)分割、主成分(PC)分析、随机森林(RF)算法分类,最后进行混淆矩阵分析、卡帕(kappa)、总体准确率(OA)和验证统计。GEOBIA 技术与 SNIC 和 GLCM 光谱和纹理特征判别以及 RF 分类器相结合,绘制出了研究区域的玉米作物图,展示了自动多光谱图像分类过程的改进和辅助性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Maize Crop Detection through Geo-Object-Oriented Analysis Using Orbital Multi-Sensors on the Google Earth Engine Platform
Mato Grosso state is the biggest maize producer in Brazil, with the predominance of cultivation concentrated in the second harvest. Due to the need to obtain more accurate and efficient data, agricultural intelligence is adapting and embracing new technologies such as the use of satellites for remote sensing and geographic information systems. In this respect, this study aimed to map the second harvest maize cultivation areas at Canarana-MT in the crop year 2019/2020 by using geographic object-based image analysis (GEOBIA) with different spatial, spectral, and temporal resolutions. MSI/Sentinel-2, OLI/Landsat-8, MODIS-Terra and MODIS-Aqua, and PlanetScope imagery were used in this assessment. The maize crops mapping was based on cartographic basis from IBGE (Brazilian Institute of Geography and Statistics) and the Google Earth Engine (GEE), and the following steps of image filtering (gray-level co-occurrence matrix—GLCM), vegetation indices calculation, segmentation by simple non-iterative clustering (SNIC), principal component (PC) analysis, and classification by random forest (RF) algorithm, followed finally by confusion matrix analysis, kappa, overall accuracy (OA), and validation statistics. From these methods, satisfactory results were found; with OA from 86.41% to 88.65% and kappa from 81.26% and 84.61% among the imagery systems considered, the GEOBIA technique combined with the SNIC and GLCM spectral and texture feature discriminations and the RF classifier presented a mapping of the corn crop of the study area that demonstrates an improved and aided the performance of automated multispectral image classification processes.
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