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A Preliminary Study on Crop Classification with Unsupervised Algorithms for Time Series on Images with Olive Trees and Cereal Crops

机译:用橄榄树和谷物作物对时间序列作物分类作物分类初步研究

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Satellite imagery has been consolidated as an accurate option to monitor or classify crops. This is due to the continuous increase in spatial-temporal resolution and the availability of free access to this kind of services. In order to generate crop type maps (a valuable preprocessing step to most remote agriculture monitoring application), time series are built from remote sensing images, and supervised techniques are widely used to classify them. However, one of the main drawbacks of these methods is the lack of labelled data sets to carry out the training process. Unsupervised classification has been less frequently used in this research field. The paper presents an experimental study comparing traditional clustering algorithms (with different dissimilarity measures) for the classification of olive trees and cereal crops from time series remote sensing data. The results obtained provide crucial information for developing novel and more accurate crop mapping algorithms.
机译:卫星图像已被整合为监测或分类作物的准确选择。 这是由于空间分辨率的不断增加以及可免费获得这种服务的可用性。 为了生成作物类型地图(对大多数远程农业监测应用的有价值的预处理步骤),时间序列是由遥感图像构建的,并且广泛用于对它们进行分类的监督技术。 然而,这些方法的主要缺点之一是缺乏标记的数据集来执行培训过程。 本研究领域的常规分类较不常用。 本文提出了一种实验研究,比较传统聚类算法(具有不同的不相似措施)对时间序列遥感数据的橄榄树和谷物作物的分类。 获得的结果为开发新颖和更准确的庄地图算法提供了重要信息。

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