红外图像中海洋涡流检测的计算机视觉

Evangelos Moschos, Alisa Kugusheva, Paul Coste, A. Stegner
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引用次数: 0

摘要

可靠而精确的海洋涡旋检测除了可以表征局部水文和生物特性,或集中上层生物外,还可以显著改善对海洋表面和地下动力学的监测。今天,大多数涡旋检测算法都是基于卫星测高网格观测,这些观测提供海面高度和地表地转速度的每日地图。然而,测高产品的可靠性和空间分辨率受到测高过程中强烈的时空平均的限制。然而,通过先进的计算机视觉方法,高分辨率卫星图像的可用性使得实时目标检测在更精细的尺度上成为可能。我们提出了一种新的涡流检测方法,通过迁移学习模式,利用高分辨率海洋数值模式的地面真实值,将涡流的特征流线与它们在海表温度(SST)上的特征(梯度、漩涡和细丝)联系起来。然后使用经过训练的多任务卷积神经网络对海温的红外卫星图像进行分割,以检索每个检测到的涡流的准确位置、大小和形式。EddyScan-SST是一个可操作的海洋学模块,可为海事利益相关者提供有关海洋动态的实时关键信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computer Vision for Ocean Eddy Detection in Infrared Imagery
Reliable and precise detection of ocean eddies can significantly improve the monitoring of the ocean surface and subsurface dynamics, besides the characterization of local hydrographical and biological properties, or the concentration pelagic species. Today, most of the eddy detection algorithms operate on satellite altimetry gridded observations, which provide daily maps of sea surface height and surface geostrophic velocity. However, the reliability and the spatial resolution of altimetry products is limited by the strong spatio-temporal averaging of the mapping procedure. Yet, the availability of high-resolution satellite imagery makes real-time object detection possible at a much finer scale, via advanced computer vision methods. We propose a novel eddy detection method via a transfer learning schema, using the ground truth of high-resolution ocean numerical models to link the characteristic streamlines of eddies with their signature (gradients, swirls, and filaments) on Sea Surface Temperature (SST). A trained, multi-task convolutional neural network is then employed to segment infrared satellite imagery of SST in order to retrieve the accurate position, size, and form of each detected eddy. The EddyScan-SST is an operational oceanographic module that provides, in real-time, key information on the ocean dynamics to maritime stakeholders.
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