Marine Environmental Impact on CFAR Ship Detection as Measured by Wave Age in SAR Images

Remote. Sens. Pub Date : 2023-07-07 DOI:10.3390/rs15133441
D. X. Bezerra, J. Lorenzzetti, R. L. Paes
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Abstract

Satellite synthetic aperture radar (SAR) images are recognized as one of the most efficient tools for day/night, all weather and large area monitoring of ships at sea. However, false alarms discrimination is still one key problem on SAR ship detection. While many discrimination techniques have been proposed for the treatment of false alarms, not enough emphasis has been targeted to explore how obtained false alarms are related to the changing ocean environmental conditions. To this end, we combined a large set of Sentinel-1 SAR images with ocean surface wind and wave data into one dataset. SAR images were separated into three distinct groups according to wave age (WA) conditions present during image acquisition: young wind sea, old wind sea, and swell. A constant false alarm rate (CFAR) ship detection algorithm was implemented based on the generalized gamma distribution (GΓD). Kolmogorov–Smirnov distance was used to analyze the distribution goodness-of-fit among distinct ocean environments. A backscattering analysis of different sizes of ship targets and sea clutter was further performed using the OpenSARShip and automatic identification system (AIS) datasets to assess its separability. We derived a discrimination threshold adjustment based on WA conditions and showed its efficacy to drastically reduce false alarms. To our present knowledge, the use of WA as part of the CFAR and for the adjustment of the threshold of detection is a novelty which could be tested and evaluated for different SAR sensors.
基于SAR图像波浪年龄测量的海洋环境对CFAR船舶检测的影响
卫星合成孔径雷达(SAR)图像被认为是对海上船舶进行昼夜、全天候和大面积监测的最有效工具之一。然而,误报识别仍然是SAR舰船探测中的一个关键问题。虽然已经提出了许多用于处理假警报的判别技术,但没有足够的重点来探讨获得的假警报如何与不断变化的海洋环境条件相关。为此,我们将大量Sentinel-1 SAR图像与海洋表面风浪数据合并为一个数据集。根据图像采集时存在的波龄(WA)条件,将SAR图像分为三组:年轻风海、老风海和涌浪。提出了一种基于广义伽玛分布的恒虚警率船舶检测算法(GΓD)。利用Kolmogorov-Smirnov距离分析不同海洋环境间的分布拟合优度。利用OpenSARShip和自动识别系统(AIS)数据集对不同尺寸的舰船目标和海杂波进行后向散射分析,评估其可分离性。我们导出了基于WA条件的判别阈值调整,并显示了其显著降低误报的有效性。据我们目前所知,使用WA作为CFAR的一部分并调整检测阈值是一种新颖的方法,可以对不同的SAR传感器进行测试和评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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