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Visualization of Deep Transfer Learning in SAR Imagery

机译:SAR意象中深度转移学习的可视化

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Synthetic Aperture Radar (SAR) imagery has diverse applications in land and marine surveillance. Unlike electro-optical (EO) systems, these systems are not affected by weather conditions and can be used in the day and night times. With the growing importance of SAR imagery, it would be desirable if models trained on widely available EO datasets can also be used for SAR images. In this work, we consider transfer learning to leverage deep features from a network trained on an EO ships dataset and generate predictions on SAR imagery. Furthermore, by exploring the network activations in the form of class-activation maps (CAMs), we visualize the transfer learning process to SAR imagery and gain insight on how a deep network interprets a new modality.
机译:合成孔径雷达(SAR)图像在陆地和海洋监测中具有多样化的应用。与电光(EO)系统不同,这些系统不受天气条件的影响,并且可以在白天和夜间使用。随着SAR Imagery的越来越重要,如果在广泛可用的EO数据集上培训的模型也可以使用SAR图像,所以可以使用。在这项工作中,我们考虑转移学习,从训练在EO船舶数据集上培训的网络中利用深度功能,并在SAR图像上生成预测。此外,通过探索类激活映射(CAMS)的形式的网络激活,我们将传输学习过程视为SAR图像,并获得深度网络如何解释新的模态的洞察力。

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