Use of a Residual Neural Network to Demonstrate Feasibility of Ship Detection Based on Synthetic Aperture Radar Raw Data

Giorgio Cascelli, C. Guaragnella, R. Nutricato, K. Tijani, A. Morea, Nicolò Ricciardi, D. Nitti
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Abstract

Synthetic Aperture Radar (SAR) is a well-established 2D imaging technique employed as a consolidated practice in several oil spill monitoring services. In this scenario, onboard detection undoubtedly represents an interesting solution to reduce the latency of these services, also enabling transmission to the ground segment of alert signals with a notable reduction in the required downlink bandwidth. However, the reduced computational capabilities available onboard require alternative approaches with respect to the standard processing flows. In this work, we propose a feasibility study of oil spill detection applied directly to raw data, which is a solution not sufficiently addressed in the literature that has the advantage of not requiring the execution of the focusing step. The study is concentrated only on the accuracy of detection, while computational cost analysis is not within the scope of this work. More specifically, we propose a complete framework based on the use of a Residual Neural Network (ResNet), including a simple and automatic simulation method for generating the training data set. The final tests with ERS real data demonstrate the feasibility of the proposed approach showing that the trained ResNet correctly detects ships with a Signal-to-Clutter Ratio (SCR) > 10.3 dB.
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利用残差神经网络展示基于合成孔径雷达原始数据的船舶探测的可行性
合成孔径雷达(SAR)是一种成熟的二维成像技术,在一些溢油监测服务中被综合利用。在这种情况下,机载探测无疑是减少这些服务延迟的一个有趣的解决方案,还能向地面段传输警报信号,同时显著减少所需的下行链路带宽。然而,由于机载计算能力降低,因此需要在标准处理流程之外采用其他方法。在这项工作中,我们提出了一项直接应用于原始数据的溢油检测可行性研究,这是一种文献中未充分涉及的解决方案,其优点是无需执行聚焦步骤。这项研究只关注检测的准确性,计算成本分析不在研究范围之内。更具体地说,我们提出了一个基于残差神经网络(ResNet)的完整框架,包括一种用于生成训练数据集的简单自动模拟方法。使用 ERS 真实数据进行的最终测试证明了所提方法的可行性,结果表明经过训练的 ResNet 可以正确探测到信号与杂波比 (SCR) > 10.3 dB 的船只。
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