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BEYOND HAND-CRAFTED FEATURES IN REMOTE SENSING

机译:除了遥感中的手工制作功能之外

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A basic problem of image classification in remote sensing is to select suitable image features. However, modern classifiers such as AdaBoost allow for feature selection driven by the training data. This capability brings up the question whether hand-crafted features are required or whether it would not be enough to extract the same quasi-exhaustive feature set for different classification problems and let the classifier choose a suitable subset for the specific image statistics of the given problem. To be able to efficiently extract a large quasi-exhaustive set of multi-scale texture and intensity features we suggest to approximate standard derivative filters via integral images. We compare our quasi-exhaustive features to several standard feature sets on four very high-resolution (VHR) aerial and satellite datasets of urban areas. We show that in combination with a boosting classifier the proposed quasi-exhaustive features outperform standard baselines.
机译:遥感中的图像分类的基本问题是选择合适的图像特征。但是,adaboost等现代分类器允许由训练数据驱动的特征选择。这种功能会带来问题是否需要手工制作的功能或者是否足以提取用于不同分类问题的相同准则功能,并且让分类器为特定问题的特定图像统计选择合适的子集。为了能够有效地提取大规模的多尺度纹理和强度特征,我们建议通过积分图像来近似标准衍生滤波器。我们将若干标准功能集比较四个非常高分辨率(VHR)的城市地区的一系列标准功能集。我们表明,与升压分类器相结合,提出的准则功能优于标准基线。

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