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Remote Sensing Scene Classification Using Multilayer Stacked Covariance Pooling

机译:多层堆叠协方差池的遥感场景分类

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This paper proposes a new method, called multilayer stacked covariance pooling (MSCP), for remote sensing scene classification. The innovative contribution of the proposed method is that it is able to naturally combine multilayer feature maps, obtained by pretrained convolutional neural network (CNN) models. Specifically, the proposed MSCP-based classification framework consists of the following three steps. First, a pretrained CNN model is used to extract multilayer feature maps. Then, the feature maps are stacked together, and a covariance matrix is calculated for the stacked features. Each entry of the resulting covariance matrix stands for the covariance of two different feature maps, which provides a natural and innovative way to exploit the complementary information provided by feature maps coming from different layers. Finally, the extracted covariance matrices are used as features for classification by a support vector machine. The experimental results, conducted on three challenging data sets, demonstrate that the proposed MSCP method can not only consistently outperform the corresponding single-layer model but also achieve better classification performance than other pretrained CNN-based scene classification methods.
机译:本文提出了一种新的方法,称为多层堆叠协方差合并(MSCP),用于遥感场景分类。该方法的创新贡献在于它能够自然地组合通过预训练卷积神经网络(CNN)模型获得的多层特征图。具体而言,建议的基于MSCP的分类框架包括以下三个步骤。首先,使用预训练的CNN模型提取多层特征图。然后,将特征图堆叠在一起,并为堆叠的特征计算协方差矩阵。所得协方差矩阵的每个条目代表两个不同特征图的协方差,这提供了一种自然而新颖的方式来利用来自不同层的特征图所提供的补充信息。最后,提取的协方差矩阵用作支持向量机分类的特征。在三个具有挑战性的数据集上进行的实验结果表明,与其他基于CNN的预训练场景分类方法相比,所提出的MSCP方法不仅可以始终胜过相应的单层模型,而且可以获得更好的分类性能。

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