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AID++: An Updated Version of AID on Scene Classification

机译:AID ++:场景分类中AID的更新版本

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Aerial image scene classification is a fundamental problem for understanding high-resolution remote sensing images and has become an active research task in the field of remote sensing due to its important role in a wide range of applications. However, the limitations of existing datasets for scene classification, such as the small scale and low-diversity, severely hamper the potential usage of the new generation deep convolutional neural networks (CNNs). Although huge efforts have been made in building large-scale datasets very recently, e.g., the Aerial Image Dataset (AID) which contains 10,000 image samples, they are still far from sufficient to fully train a high-capacity deep CNN model. To this end, we present a larger-scale dataset in this paper, named as AID++, for aerial scene classification based on the AID dataset. The proposed AID++ consists of more than 400,000 image samples that are semi-automatically annotated by using the existing the geographical data. We evaluate several prevalent CNN models on the proposed dataset, and the results show that our dataset can be used as a promising benchmark for scene classification.
机译:航空影像场景分类是理解高分辨率遥感影像的基本问题,由于其在广泛应用中的重要作用,已经成为遥感领域的一项活跃的研究任务。但是,现有的场景分类数据集的局限性(例如小规模和低多样性)严重阻碍了新一代深度卷积神经网络(CNN)的潜在使用。尽管最近在构建大规模数据集方面付出了巨大的努力,例如包含10,000个图像样本的航空图像数据集(AID),但仍远远不足以完全训练高容量的深CNN模型。为此,我们在本文中提出了一个较大规模的数据集,称为AID ++,用于基于AID数据集的空中场景分类。拟议中的AID ++由超过40万个图像样本组成,这些图像样本使用现有的地理数据进行了半自动注释。我们在提出的数据集上评估了几种流行的CNN模型,结果表明我们的数据集可以用作场景分类的有希望的基准。

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