Synthetic Aperture Radar (SAR) imaging systems operate by emitting radar signals from a moving object, such as a satellite, towards the target of interest. Reflected radar echoes are received and later used by image formation algorithms to form a SAR image. There is great interest in using SAR images in computer vision tasks such as classification or automatic target recognition. Today, however, SAR applications consist of multiple operations: image formation followed by image processing. In this work, we train a deep neural network that performs both the image formation and image processing tasks, integrating the SAR processing pipeline. Results show that our integrated pipeline can output accurately classified SAR imagery with image quality comparable to those formed using a traditional algorithm. We believe that this work is the first demonstration of an integrated neural network based SAR processing pipeline using real data.
翻译:反射雷达回声被接收,后来被图像形成算法用于形成合成孔径雷达图像。对于在计算机视觉任务中使用合成孔径雷达图像的兴趣很大,例如分类或自动目标识别。然而,今天,合成孔径雷达应用由多种操作组成:图像形成,然后是图像处理。在这项工作中,我们训练一个深神经网络,既执行图像形成任务,又执行图像处理任务,将合成孔径雷达处理管道整合在一起。结果显示,我们的综合管道可以精确地对合成孔径雷达图像进行分类,其图像质量与使用传统算法形成的图像质量相当。我们认为,这项工作是使用真实数据进行综合神经网络合成孔径雷达处理管道的首次示范。