论文标题
精确农业的卫星驱动植被指数的基于无人机和机器学习的改进
UAV and Machine Learning Based Refinement of a Satellite-Driven Vegetation Index for Precision Agriculture
论文作者
论文摘要
精密农业被认为是追求低投入,高效率和可持续性农业时的一种基本方法。为了实现这一目标,需要对农作物的局部状态进行可靠且最新的描述。遥感,特别是基于卫星的图像,被证明是作物映射,监测和疾病评估的宝贵工具。但是,具有低分辨率或中等分辨率的自由使用的卫星图像在特定的农业应用中显示出一些限制,例如,农作物通过行种植。确实,在这个框架中,卫星的输出可能会因行列内覆盖而偏向,从而提供了有关作物状态的不准确信息。本文基于深度学习技术提出了一种新型的卫星图像精炼框架,该技术利用了从无人驾驶汽车(UAV)机载多光谱传感器获得的高分辨率图像中正确得出的信息。为了训练卷积神经网络,只需要一个单个无人机驱动的数据集,这使得提出的方法变得简单且具有成本效益。为了验证目的,选择了Serralunga d'Alba(意大利北部)的葡萄园作为案例研究。精致的卫星驱动的归一化差异植被指数(NDVI)地图在葡萄藤生长季节的四个不同时期内获得,可通过相关分析和ANOVA更好地描述有关原始数据集的作物状态。此外,使用基于K-均值的分类器,从NDVI地图中得出了3级葡萄园活力地图,这是种植者的宝贵工具。
Precision agriculture is considered to be a fundamental approach in pursuing a low-input, high-efficiency, and sustainable kind of agriculture when performing site-specific management practices. To achieve this objective, a reliable and updated description of the local status of crops is required. Remote sensing, and in particular satellite-based imagery, proved to be a valuable tool in crop mapping, monitoring, and diseases assessment. However, freely available satellite imagery with low or moderate resolutions showed some limits in specific agricultural applications, e.g., where crops are grown by rows. Indeed, in this framework, the satellite's output could be biased by intra-row covering, giving inaccurate information about crop status. This paper presents a novel satellite imagery refinement framework, based on a deep learning technique which exploits information properly derived from high resolution images acquired by unmanned aerial vehicle (UAV) airborne multispectral sensors. To train the convolutional neural network, only a single UAV-driven dataset is required, making the proposed approach simple and cost-effective. A vineyard in Serralunga d'Alba (Northern Italy) was chosen as a case study for validation purposes. Refined satellite-driven normalized difference vegetation index (NDVI) maps, acquired in four different periods during the vine growing season, were shown to better describe crop status with respect to raw datasets by correlation analysis and ANOVA. In addition, using a K-means based classifier, 3-class vineyard vigor maps were profitably derived from the NDVI maps, which are a valuable tool for growers.