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Can semantic labeling methods generalize to any city? the inria aerial image labeling benchmark

机译:可以语义标记方法推广到任何城市吗? inria空中图像标记基准

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New challenges in remote sensing impose the necessity of designing pixel classification methods that, once trained on a certain dataset, generalize to other areas of the earth. This may include regions where the appearance of the same type of objects is significantly different. In the literature it is common to use a single image and split it into training and test sets to train a classifier and assess its performance, respectively. However, this does not prove the generalization capabilities to other inputs. In this paper, we propose an aerial image labeling dataset that covers a wide range of urban settlement appearances, from different geographic locations. Moreover, the cities included in the test set are different from those of the training set. We also experiment with convolutional neural networks on our dataset.
机译:遥感中的新挑战强加了设计像素分类方法的必要性,一旦培训在某个数据集上,概括到地球的其他区域。这可能包括相同类型物体的外观的区域显着不同。在文献中,通常使用单个图像并将其分成训练和测试集以分别培训分类器并分别评估其性能。但是,这并未向其他输入证明概括功能。在本文中,我们提出了一个空中图像标签数据集,这些数据集涵盖了来自不同地理位置的广泛城市沉降外观。此外,测试集中包括的城市与培训集的城市不同。我们还在我们的数据集上尝试卷积神经网络。

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