RetinaNet:一种深度学习架构,用于实现SAR图像的鲁棒尾迹检测器

Roberto Del Prete, M. Graziano, A. Renga
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引用次数: 2

摘要

卫星数据的具体目的是提高我们对海洋领域的认识,可用于广泛的应用,包括渔业和污染控制、反海盗行动以及对沿海/受保护地区的监视。在所有可用数据中,星载合成孔径雷达(SAR)收集的数据由于其覆盖范围和全天候和全天候观测能力而引起了人们的极大兴趣。目前,人工智能(AI)已被广泛认为是充分利用越来越多的地球观测(EO)数据的唯一途径,基于深度学习的探测器已成功应用于从混乱的海面检测船舶。然而,尽管它们被用于船舶航线估计目的,但通过深度学习进行尾流检测的问题几乎没有被触及。考虑到这一点,本文研究了一种最新的用于目标检测的深度学习架构,即RetinaNet,作为实现鲁棒尾流检测器的有效手段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RetinaNet: A deep learning architecture to achieve a robust wake detector in SAR images
With the specific aim of improving our Maritime Domain Awareness, satellite data enable a wide range of applications, including fisheries and pollution control, anti-piracy actions, and surveillance over coastal/protected regions. Among all the available data, the ones gathered by space-borne synthetic aperture radar (SAR) are attracting large interest thanks to their coverage and all-weather and all-time observation capabilities. Currently, Artificial Intelligence (AI) has been widely recognized as the only way to take fully advantages of increasing amount of Earth Observation (EO) data, and Deep Learning-based detectors have been successfully applied for the detection of ships from cluttered sea surface. However, nonetheless their exploitation for ship route estimation purposes, the problem of wake detection by deep learning has been barely touched. With this concern, the paper investigates one of the latest deep learning architecture for object detection, i.e. RetinaNet, as an effective means to achieve a robust wake detector.
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