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A NOVEL MULTI-BAND SAR DATA TECHNIQUE FOR FULLY AUTOMATIC OIL SPILL DETECTION IN THE OCEAN

机译:海洋中全自动溢油检测的新型多波段SAR数据技术

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With the launch of the Italian constellation of small satellites for the Mediterranean basin observation COSMO-SkyMed and the German TerraSAR-X missions, the delivery of very high-resolution SAR data to observe the Earth day or night has remarkably increased. In particular, also taking into account other ongoing missions such as Radarsat or those no longer working such as ALOS PALSAR, ERS-SAR and ENVISAT the amount of information, at different bands, available for users interested in oil spill analysis has become highly massive. Moreover, future SAR missions such as Sentinel-1 are scheduled for launch in the very next years while additional support can be provided by Uninhabited Aerial Vehicle (UAV) SAR systems. Considering the opportunity represented by all these missions, the challenge is to find suitable and adequate image processing multi-band procedures able to fully exploit the huge amount of data available. In this paper we present a new fast, robust and effective automated approach for oil-spill monitoring starting from data collected at different bands, polarizations and spatial resolutions. A combination of Weibull Multiplicative Model (WMM), Pulse Coupled Neural Network (PCNN) and Multi-Layer Perceptron (MLP) techniques is proposed for achieving the aforementioned goals. One of the most innovative ideas is to separate the dark spot detection process into two main steps, WMM enhancement and PCNN segmentation. The complete processing chain has been applied to a data set containing C-band (ERS-SAR, ENVISAT ASAR), X-band images (Cosmo-SkyMed and TerraSAR-X) and L-band images (UAVSAR) for an overall number of more than 200 images considered.
机译:随着用于地中海盆地观测COSMO-SkyMed和德国TerraSAR-X任务的意大利小卫星的发射,白天或黑夜用于观测地球的超高分辨率SAR数据的传递显着增加。特别是,还要考虑到其他正在进行的任务(例如Radarsat)或不再工作的任务(例如ALOS PALSAR,ERS-SAR和ENVISAT),对漏油分析感兴趣的用户可以使用不同频段的信息量很大。此外,未来的SAR任务(如Sentinel-1)计划在接下来的几年内发射,而无人飞行器(UAV)SAR系统可以提供额外的支持。考虑到所有这些任务所代表的机会,面临的挑战是找到合适和适当的图像处理多频段程序,以充分利用大量可用数据。在本文中,我们提出了一种新的快速,稳健和有效的自动化溢油监测方法,该方法从不同波段,极化和空间分辨率下收集的数据开始。为了实现上述目标,提出了威布尔乘法模型(WMM),脉冲耦合神经网络(PCNN)和多层感知器(MLP)技术的组合。最具创新性的想法之一是将暗点检测过程分为两个主要步骤:WMM增强和PCNN分割。完整的处理链已应用于包含C波段(ERS-SAR,ENVISAT ASAR),X波段图像(Cosmo-SkyMed和TerraSAR-X)和L波段图像(UAVSAR)的数据集,考虑了200多个图像。

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