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Exploiting representations from pre-trained convolutional neural networks for high-resolution remote sensing image retrieval

机译:利用预训练卷积神经网络的表示进行高分辨率遥感影像检索

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摘要

With the increasing amount of high-resolution remote sensing images, it becomes more and more urgent to retrieve remote sensing images from large archives efficiently. The existing methods are mainly based on shallow features to retrieve images, while shallow features are easily affected by artificial intervention. Recently, convolutional neural networks (CNNs) are capable of learning feature representations automatically, and CNNs pre-trained on large-scale datasets are generic. This paper exploits representations from pre-trained CNNs for high-resolution remote sensing image retrieval. CNN representations from AlexNet, VGGM, VGG16, and GoogLeNet are first transferred for high-resolution remote sensing images, and then CNN features are extracted via two approaches. One is extracting the outputs of high-level layers directly and the other is aggregating the outputs of mid-level layers by means of average pooling with different pooling regions. Given the generalization and high dimensionality of the CNN features, feature combination and feature compression are also adopted to improve the feature representation. Experimental results demonstrate that aggregated features with pooling region smaller than the feature map size perform excellently, especially for VGG16 and GoogLeNet. Shallow feature makes a great contribution to enhance the retrieval precision when combined with CNN features, and compressed features reduce redundancy effectively. Compared with the state-of-the-art methods, the proposed feature extraction methods are very simple, and the features are able to improve retrieval performance significantly.
机译:随着高分辨率遥感影像数量的增加,从大型档案馆中高效检索遥感影像变得越来越紧迫。现有方法主要基于浅层特征来检索图像,而浅层特征容易受到人工干预。最近,卷积神经网络(CNN)能够自动学习特征表示,而在大规模数据集上进行预训练的CNN是通用的。本文利用来自预训练的CNN的表示来进行高分辨率遥感影像检索。首先传输来自AlexNet,VGGM,VGG16和GoogLeNet的CNN表示,以获取高分辨率的遥感图像,然后通过两种方法提取CNN特征。一种是直接提取高层的输出,另一种是通过使用不同池区域的平均池聚合中层的输出。鉴于CNN特征的一般性和高维性,还采用特征组合和特征压缩来改善特征表示。实验结果表明,聚合区域的合并区域小于特征图的大小,表现出色,尤其是对于VGG16和GoogLeNet。浅功能与CNN功能结合使用对提高检索精度做出了巨大贡献,而压缩功能有效地减少了冗余。与最新技术相比,所提出的特征提取方法非常简单,并且这些特征能够显着提高检索性能。

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