Land cover and crop classification using multitemporal sentinel-2 images based on crops phenological cycle

Aleem Khaliq, L. Peroni, M. Chiaberge
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引用次数: 22

Abstract

Italy is considered one of the developed country in the field of agriculture in Europe. For many reasons, reliable classification of crops and mapping plays an important role in Precision Agriculture (PA). Increasing availability, improving spatial resolution and high revisit time of sentinel-2 satellite become more useful and play an important role in analyses for land cover, crop classification and other remote sensing applications. Most of the Crops with similar spectral characteristics can be distinguished by accumulating spectral information of different phenological stages. In literature, many solutions have been proposed to classify crops using multitemporal images acquired from various satellites equipped with multispectral imagery sensors. However, features and images selection from multispectral, multitemporal images still needs improvement. In this paper, crops phenological cycles are investigated using temporal normalized difference vegetation index (NDVI) patterns and major crop phenological information are used to select best multitemporal images for the input of random forest (RF) classifier to classify land cover and crops.
意大利被认为是欧洲农业领域的发达国家之一。由于多种原因,可靠的作物分类和制图在精准农业中起着重要的作用。哨兵2号卫星可用性的提高、空间分辨率的提高和高重访时间在土地覆盖分析、作物分类和其他遥感应用中发挥着越来越重要的作用。通过积累不同物候期的光谱信息,可以区分出大多数具有相似光谱特征的作物。在文献中,已经提出了许多解决方案,利用从配备多光谱图像传感器的各种卫星获取的多时相图像对作物进行分类。然而,多光谱、多时相图像的特征和图像选择仍有待改进。本文利用时间归一化植被指数(NDVI)模式研究作物物候周期,并利用主要作物物候信息选择最佳多时相图像作为随机森林(RF)分类器的输入,对土地覆盖和作物进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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