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Low Dimensional Discriminative Representation of Fully Connected Layer Features Using Extended LargeVis Method for High-Resolution Remote Sensing Image Retrieval

机译:利用扩展大型方法对高分辨率遥感图像检索的扩展大型方法的低尺寸鉴别表示完全连接的层特征

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摘要

Recently, there have been rapid advances in high-resolution remote sensing image retrieval, which plays an important role in remote sensing data management and utilization. For content-based remote sensing image retrieval, low-dimensional, representative and discriminative features are essential to ensure good retrieval accuracy and speed. Dimensionality reduction is one of the important solutions to improve the quality of features in image retrieval, in which LargeVis is an effective algorithm specifically designed for Big Data visualization. Here, an extended LargeVis (E-LargeVis) dimensionality reduction method for high-resolution remote sensing image retrieval is proposed. This can realize the dimensionality reduction of single high-dimensional data by modeling the implicit mapping relationship between LargeVis high-dimensional data and low-dimensional data with support vector regression. An effective high-resolution remote sensing image retrieval method is proposed to obtain stronger representative and discriminative deep features. First, the fully connected layer features are extracted using a channel attention-based ResNet50 as a backbone network. Then, E-LargeVis is used to reduce the dimensionality of the fully connected features to obtain a low-dimensional discriminative representation. Finally, L2 distance is computed for similarity measurement to realize the retrieval of high-resolution remote sensing images. The experimental results on four high-resolution remote sensing image datasets, including UCM, RS19, RSSCN7, and AID, show that for various convolutional neural network architectures, the proposed E-LargeVis can effectively improve retrieval performance, far exceeding other dimensionality reduction methods.
机译:最近,高分辨率遥感图像检索已经快速进展,这在遥感数据管理和利用方面起着重要作用。对于基于内容的遥感图像检索,低维,代表性和鉴别特征对于确保良好的检索精度和速度至关重要。维数减少是提高图像检索中的特征质量的重要解决方案之一,其中大维是一种专门设计用于大数据可视化的有效算法。这里,提出了一种用于高分辨率遥感图像检索的扩展大型(E-MATRALVIS)维度降低方法。这可以通过使用支持向量回归来建立大型高维数据和低维数据之间的隐式映射关系来实现单一高维数据的维度降低。提出了一种有效的高分辨率遥感图像检索方法,以获得更强的代表性和鉴别的深度特征。首先,使用基于信道注意力的RENet50作为骨干网络来提取完全连接的层特征。然后,E-MATRALVIS用于降低完全连接特征的维度以获得低维辨别表示。最后,计算L2距离以实现相似性测量以实现高分辨率遥感图像的检索。四个高分辨率遥感图像数据集的实验结果,包括UCM,RS19,RSSCN7和AID,表明对于各种卷积神经网络架构,所提出的E-MATRALVIS可以有效地提高检索性能,远远超过其他维数减少方法。

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