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Temporal Vegetation Modelling using Long Short-Term Memory Networks for Crop Identification from Medium-Resolution Multi-Spectral Satellite Images

机译:颞植被建模使用长短短期记忆网络进行中分辨率多光谱卫星图像作物识别

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Land-cover classification (LCC) is one of the central problems in earth observation and was extensively investigated over recent decades. In many cases, existing approaches concentrate on single-time and multi- or hyper-spectral reflectance measurements observed by spaceborne and air-borne sensors. However, land-cover classes, such as crops, change their reflective characteristics over time, thus complicating a classification at one particular observation time. Opposed to that, these characteristics change in a system-atic and predictive manner, which should be utilized in a multi-temporal approach. We employ long short-term memory (LSTM) networks to extract temporal characteristics from a sequence of SENTINEL 2A observations. We compared the performance of LSTM networks with other architectures and a support vector machine (SVM) baseline and show the effectiveness of dynamic temporal feature extraction. For our experiments, a large study area together with rich ground truth annotations provided by public authorities was used for training and evaluation. Our rather straightforward LSTM variant achieved state-of-the art classification performance, thus opening promising potential for further research.
机译:陆地覆盖分类(LCC)是地球观测中的核心问题之一,并在近几十年来广泛调查。在许多情况下,现有方法集中在由星载和空气传感器观察到的单时间和多次或超光谱反射测量。然而,诸如作物之类的陆地覆盖类别随着时间的推移而改变反射特性,从而使一个特定观察时间的分类复杂化。与此相反,这些特征在于系统 - ATIC和预测方式改变,这应该以多时间方法利用。我们采用了长期内存(LSTM)网络来从一系列哨兵2A观察中提取时间特征。我们将LSTM网络与其他架构和支持向量机(SVM)基线进行了比较,并显示了动态时间特征提取的有效性。对于我们的实验,公共当局提供的大型学习区以及公共当局提供的丰富地理注释用于培训和评估。我们相当简单的LSTM变体实现了最先进的分类性能,从而开放有希望的进一步研究的潜力。

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