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在 Google Earth Engine 平台上使用机器学习算法进行向日葵图谱绘制。

Sunflower mapping using machine learning algorithm in Google Earth Engine platform.

机构信息

Haryana Space Applications Centre, CCS HAU Campus, Hisar, Haryana, India.

Department of Geography, School of Environment and Earth Sciences, Central University of Punjab, Bathinda, India.

出版信息

Environ Monit Assess. 2024 Nov 18;196(12):1208. doi: 10.1007/s10661-024-13369-5.

DOI:10.1007/s10661-024-13369-5
PMID:39556277
Abstract

The sunflower crop is one of the most pro sources of vegetable oil globally. It is cultivated all around the world including Haryana, in India. However, its mapping is limited due to the requirement of huge computation power, large data storage capacity, small farm holdings, and information gap on appropriate algorithms and spectral band combinations. Thus, the current work has been done to identify an appropriate machine learning (ML) algorithm (after comparing random forest (RF) and support vector machine (SVM) reported as the best classifiers for land use and land cover) and best band combinations (among the six combinations (including Sentinel-Optical, Sentinel-SAR, and combined-Optical-SAR in single data and time series manner) for Sunflower crop mapping in Ambala and Kurukshetra districts of Haryana using Google Earth Engine (GEE) cloud platform. GEE cloud-computing system combined with RF and SVM provided Sunflower map with an accuracy ranging from 0.0% to 90% in various bands and classifiers combinations but was the highest for the RF with single date optical data. The SVM classifier tuned with parameters like kernel type, degree, gamma, and cost provided better overall accuracy for the classification of land use and land cover along with Sunflower ranging from 98.09% to 98.44% and Kappa coefficient ranging from 0.96 to 0.97 for optical data and combination of SAR and optical time series. The platform is efficient and applicable for a larger part of the country to map Sunflower and other crops with currently identified combinations of satellite data and methodology due to the availability of satellite images, advanced ML algorithms, and analytical modules on a single platform.

摘要

向日葵作物是全球最重要的蔬菜油来源之一。它在世界各地都有种植,包括印度的哈里亚纳邦。然而,由于需要大量的计算能力、大容量的数据存储、小规模的农场和关于适当算法和光谱波段组合的信息差距,其测绘受到限制。因此,目前已经开展了工作,以确定一种合适的机器学习 (ML) 算法(在比较随机森林 (RF) 和支持向量机 (SVM) 之后,这两种算法被报道为土地利用和土地覆盖分类的最佳分类器)和最佳波段组合(在六个组合中(包括 Sentinel-Optical、Sentinel-SAR 和组合-Optical-SAR 以单数据和时间序列方式),用于在哈里亚纳邦的安巴拉和库鲁克舍特拉地区使用 Google Earth Engine (GEE) 云平台进行向日葵作物测绘。GEE 云计算系统结合 RF 和 SVM,在各种波段和分类器组合中为向日葵提供了从 0.0%到 90%的准确度,但在单日期光学数据中,RF 的准确度最高。经过参数调整的 SVM 分类器,如核类型、度数、伽马和成本,为土地利用和土地覆盖以及向日葵的分类提供了更好的整体准确度,从光学数据和 SAR 和光学时间序列的组合来看,准确度从 98.09%到 98.44%不等,kappa 系数从 0.96 到 0.97 不等。由于单一平台上卫星图像、先进的 ML 算法和分析模块的可用性,该平台对于该国的大部分地区来说都是高效且适用的,可用于测绘向日葵和其他作物以及当前确定的卫星数据和方法组合。

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