首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >AUTOMATICALLY GENERATED TRAINING DATA FOR LAND COVER CLASSIFICATION WITH CNNS USING SENTINEL-2 IMAGES
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AUTOMATICALLY GENERATED TRAINING DATA FOR LAND COVER CLASSIFICATION WITH CNNS USING SENTINEL-2 IMAGES

机译:使用Sentinel-2图像自动生成用于CNN的土地覆盖分类训练数据

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Pixel-wise classification of remote sensing imagery is highly interesting for tasks like land cover classification or change detection. The acquisition of large training data sets for these tasks is challenging, but necessary to obtain good results with deep learning algorithms such as convolutional neural networks (CNN). In this paper we present a method for the automatic generation of a large amount of training data by combining satellite imagery with reference data from an available geospatial database. Due to this combination of different data sources the resulting training data contain a certain amount of incorrect labels. We evaluate the influence of this so called label noise regarding the time difference between acquisition of the two data sources, the amount of training data and the class structure. We combine Sentinel-2 images with reference data from a geospatial database provided by the German Land Survey Office of Lower Saxony (LGLN). With different training sets we train a fully convolutional neural network (FCN) and classify four land cover classes (Building, Agriculture, Forest, Water). Our results show that the errors in the training samples do not have a large influence on the resulting classifiers. This is probably due to the fact that the noise is randomly distributed and thus, neighbours of incorrect samples are predominantly correct. As expected, a larger amount of training data improves the results, especially for the less well represented classes. Other influences are different illuminations conditions and seasonal effects during data acquisition. To better adapt the classifier to these different conditions they should also be included in the training data.
机译:遥感图像的Pixel-Wise分类对于土地覆盖分类或变更检测等任务非常有趣。这些任务的大型培训数据集的收购是具有挑战性的,但是有必要通过诸如卷积神经网络(CNN)等深入学习算法来获得良好的结果。在本文中,我们通过将卫星图像与来自可用的地理空间数据库的参考数据组合,提出了一种用于自动生成大量训练数据的方法。由于这种不同的数据源的组合,产生的训练数据包含一定量的不正确标签。我们评估了这种所谓的标签噪声关于获取两个数据源的时差,训练数据和类结构之间的时间差的影响。我们将Sentinel-2图像与来自德国土地调查办公室(LGLN)提供的地理空间数据库中的参考数据组合。使用不同的培训套装,我们训练一个完全卷积的神经网络(FCN)并分类四个陆地覆盖类(建筑,农业,森林,水)。我们的研究结果表明,训练样本中的误差对所得到的分类器没有很大影响。这可能是由于噪声随机分布而且因此,不正确的样本的邻居主要是正确的。正如预期的那样,更大的培训数据可以提高结果,特别是对于较少的代表课程。其他影响是数据采集期间的不同照明条件和季节性效应。为了更好地使分类器适应这些不同的条件,它们也应该包含在训练数据中。

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