Hussain Maya Haj, Abuhani Diaa Addeen, Khan Jowaria, ElMohandes Mohamed, Zualkernan Imran, Ali Tarig
Department of Computer Science and Engineering, American University of Sharjah, Sharjah P.O. Box 26666, United Arab Emirates.
Department of Civil Engineering, American University of Sharjah, Sharjah P.O. Box 26666, United Arab Emirates.
Sensors (Basel). 2023 Jul 27;23(15):6729. doi: 10.3390/s23156729.
Many applications in agriculture as well as other related fields including natural resources, environment, health, and sustainability, depend on recent and reliable cropland maps. Cropland extent and intensity plays a critical input variable for the study of crop production and food security around the world. However, generating such variables manually is difficult, expensive, and time consuming. In this work, we discuss a cost effective, fast, and simple machine-learning-based approach to provide reliable cropland mapping model using satellite imagery. The study includes four test regions, namely Iran, Mozambique, Sri-Lanka, and Sudan, where Sentinel-2 satellite imagery were obtained with assigned NDVI scores. The solution presented in this paper discusses a complete pipeline including data collection, time series reconstruction, and cropland extent and crop intensity mapping using machine learning models. The approach proposed managed to achieve high accuracy results ranging between 0.92 and 0.98 across the four test regions at hand.
农业以及包括自然资源、环境、健康和可持续性在内的其他相关领域中的许多应用都依赖于最新且可靠的农田地图。农田范围和强度是全球作物生产和粮食安全研究的关键输入变量。然而,手动生成这些变量既困难、成本高又耗时。在这项工作中,我们讨论了一种经济高效、快速且简单的基于机器学习的方法,以利用卫星图像提供可靠的农田测绘模型。该研究包括四个测试区域,即伊朗、莫桑比克、斯里兰卡和苏丹,在这些区域获取了带有指定归一化植被指数(NDVI)分数的哨兵 - 2 卫星图像。本文提出的解决方案讨论了一个完整的流程,包括数据收集、时间序列重建以及使用机器学习模型进行农田范围和作物强度测绘。所提出的方法在手头的四个测试区域中成功取得了 0.92 至 0.98 之间的高精度结果。