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Analysis of the inter-dataset representation ability of deep features for high spatial resolution remote sensing image scene classification

机译:高空间分辨率遥感图像场景分类的深度特征间数据集互相呈现能力分析

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摘要

Recently, scene based classification has become a new trend for very high spatial resolution remote sensing image interpretation. With the advent of deep learning, the pretrained convolutional neural networks (CNNs) have been proved effective as feature extractors for scene classification tasks in the remote sensing domain, but the potential characteristics and capabilities of such deep features have not been sufficiently analyzed and fully understood. Facing with complex remote sensing scenes with huge intra-class variations, it is still not clear about the limitation of these powerful deep features in exploring essential invariant attributes of remote sensing scenes of the same kind but, in most cases, from separate sources. Therefore, this paper makes an intensive investigation in the feature representation ability of such deep features from the aspect of inter-dataset scene classification of remote sensing images. Four well-known pretrained CNN models and three different commonly used datasets are selected and summarized. Firstly, deep features extracted from various intermediate layers of these models are compared. Then, the inter-dataset feature representation ability is evaluated using cross-classification of different datasets and discussed in terms of imaging spatial resolution, image size, model structure, and time efficiency. Finally, several instructive findings are revealed and conclusions are drawn regarding the strength and weakness of the CNN features in the application of remote sensing image scene classification.
机译:最近,基于场景的分类已成为非常高空间分辨率遥感图像解释的新趋势。随着深度学习的出现,预先训练的卷积神经网络(CNNS)已被证明作为遥感域中的场景分类任务的特征提取器有效,但这种深度特征的潜在特征和能力尚未得到充分的分析和完全理解。面对具有巨大级别变体的复杂遥感场景,仍然不清楚这些强大的深度特征的限制,探索同类遥感场景的基本不变属性,但在大多数情况下,来自单独的源。因此,本文在远程传感图像的数据集间场景分类的方面,对这种深度特征的特征表示能力进行了强化调查。选择并汇总了四种众所周知的佩戴的CNN模型和三个不同常用的数据集。首先,比较这些模型的各种中间层中提取的深度特征。然后,使用不同数据集的交叉分类来评估数据集互相特征表示能力,并根据成像空间分辨率,图像大小,模型结构和时间效率讨论。最后,揭示了几种有效的发现,并且关于CNN特征在应用遥感图像场景分类中的强度和弱点的结论。

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