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Semantic segmentation using deep neural networks for SAR and optical image pairs

机译:使用深度神经网络对SAR和光学图像对进行语义分割

摘要

Semantic segmentation for synthetic aperture radar (SAR)udimagery is a rarely touched area, due to the specific imageudcharacteristics of SAR images. In this research, we propose a dataset which consists of three data sources: TerraSAR-X images, Google Earth images and OpenStreetMap data, with the purpose of performing SAR and optical image semantic segmentation. By using fully convolutional networks and deep residual networks with pre-trained weights, we investigate the accuracy and mean IOU values of semantic segmentation for both SAR and optical image patches. The best Segmentation accuracy results for SAR and optical data are around 74% and 82%. Moreover, we study SAR models by combining multiple data sources: Google Earth images and OpenStreetMap data.
机译:由于SAR图像具有特殊的图像特征,因此合成孔径雷达(SAR)图像的语义分割是一个很少涉及的领域。在这项研究中,我们提出了一个数据集,该数据集由三个数据源组成:TerraSAR-X图像,Google Earth图像和OpenStreetMap数据,目的是执行SAR和光学图像语义分割。通过使用具有预训练权重的全卷积网络和深残差网络,我们研究了SAR和光学图像补丁的语义分割的准确性和平均IOU值。 SAR和光学数据的最佳分割精度结果约为74%和82%。此外,我们通过组合多个数据源来研究SAR模型:Google Earth图像和OpenStreetMap数据。

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