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Deep Learning for Feature Extraction in Remote Sensing: A Case-Study of Aerial Scene Classification

机译:遥感中特征提取的深度学习 - 以空域分类为例

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摘要

Scene classification relying on images is essential in many systems and applications related to remote sensing. The scientific interest in scene classification from remotely collected images is increasing, and many datasets and algorithms are being developed. The introduction of convolutional neural networks (CNN) and other deep learning techniques contributed to vast improvements in the accuracy of image scene classification in such systems. To classify the scene from areal images, we used a two-stream deep architecture. We performed the first part of the classification, the feature extraction, using pre-trained CNN that extracts deep features of aerial images from different network layers: the average pooling layer or some of the previous convolutional layers. Next, we applied feature concatenation on extracted features from various neural networks, after dimensionality reduction was performed on enormous feature vectors. We experimented extensively with different CNN architectures, to get optimal results. Finally, we used the Support Vector Machine (SVM) for the classification of the concatenated features. The competitiveness of the examined technique was evaluated on two real-world datasets: UC Merced and WHU-RS. The obtained classification accuracies demonstrate that the considered method has competitive results compared to other cutting-edge techniques.
机译:依赖图像的场景分类在许多与遥感相关的系统和应用程序中是必不可少的。从远程收集的图像中的场景分类的科学兴趣正在增加,并且正在开发许多数据集和算法。卷积神经网络(CNN)和其他深度学习技术的引入促进了这种系统中图像场景分类的准确性的巨大改进。要从区域图像中对现场进行分类,我们使用了双流深度架构。我们执行了分类的第一部分,特征提取,使用预先训练的CNN,从不同的网络层提取空中图像的深度特征:平均池层或一些先前的卷积层。接下来,在对巨大特征向量进行维度降低之后,我们应用于各种神经网络的提取特征的特征串联。我们在不同的CNN架构中广泛尝试,以获得最佳结果。最后,我们使用了支持向量机(SVM)来分类连接功能。在两个现实世界数据集中评估了检查技术的竞争力:UC Merced和Whu-Rs。所获得的分类精度证明,与其他尖端技术相比,所考虑的方法具有竞争力的结果。

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