Localized Crop Classification by NDVI Time Series Analysis of Remote Sensing Satellite Data; Applications for Mechanization Strategy and Integrated Resource Management

Hafiz Md-Tahir, H. S. Mahmood, M. Husain, A. Khalil, Muhammad Shoaib, Mahmood Ali, Muhammad Mohsin Ali, Muhammad Tasawar, Yasir Ali Khan, U. Awan, M. J. M. Cheema
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Abstract

In data-scarce regions, prudent planning and precise decision-making for sustainable development, especially in agriculture, remain challenging due to the lack of correct information. Remotely sensed satellite images provide a powerful source for assessing land use and land cover (LULC) classes and crop identification. Applying remote sensing (RS) in conjunction with the Geographical Information System (GIS) and modern tools/algorithms of artificial intelligence (AI) and deep learning has been proven effective for strategic planning and integrated resource management. The study was conducted in the canal command area of the Lower Chenab Canal system in Punjab, Pakistan. Crop features/classes were assessed using the Normalized Difference Vegetation Index (NDVI) algorithm. The Moderate Resolution Imaging Spectroradiometer (MODIS) 250 m and Landsat 5 TM (thematic mapper) images were deployed for NDVI time-series analysis with an unsupervised classification technique to obtain LULC classes that helped to discern cropping pattern, crop rotation, and the area of specific crops, which were then used as key inputs for agricultural mechanization planning and resource management. The accuracy of the LULC map was 78%, as assessed by the error matrix approach. Limitations of high-resolution RS data availability and the accuracy of the results are the concerns observed in this study that could be managed by the availability of good quality local sources and advanced processing techniques, that would make it more useful and applicable for regional agriculture and environmental management.
利用遥感卫星数据的 NDVI 时间序列分析进行本地化作物分类;在机械化战略和综合资源管理中的应用
在数据稀缺的地区,由于缺乏正确的信息,为可持续发展(尤其是农业)进行审慎的规划和精确的决策仍然具有挑战性。遥感卫星图像为评估土地利用和土地覆盖(LULC)等级以及识别作物提供了强大的信息来源。将遥感(RS)与地理信息系统(GIS)以及人工智能(AI)和深度学习的现代工具/算法相结合,已被证明对战略规划和综合资源管理非常有效。这项研究在巴基斯坦旁遮普省下切纳布运河系统的运河指挥区进行。使用归一化植被指数(NDVI)算法对作物特征/类别进行了评估。利用中分辨率成像分光仪(MODIS)250 米和大地遥感卫星 5 TM(专题成像仪)图像进行归一化差异植被指数时间序列分析,并采用无监督分类技术获得土地利用、土地利用变化(LULC)类别,以帮助识别耕作模式、作物轮作和特定作物的面积,然后将其作为农业机械化规划和资源管理的关键输入。根据误差矩阵法评估,LULC 地图的准确率为 78%。高分辨率 RS 数据的可用性和结果的准确性是本研究中观察到的问题,这些问题可以通过提供优质的本地资源和先进的处理技术来解决,从而使其对区域农业和环境管理更加有用和适用。
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