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Neural networks for eddy detection in satellite imagery

机译:用于卫星图像涡流检测的神经网络

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Abstract: For several years the Naval Research Laboratory has worked toward the development of automated techniques for the analysis and interpretation of satellite oceanographic imagery. These techniques are combined to form the Semi-Automated Mesoscale Analysis System (SAMAS), which produces mesoscale charts of the Gulf Stream region. A key requirement of SAMAS is the ability to define location and size of mesoscale features known as eddies. A new method consists of a data reduction step using the Fourier power spectrum and a classification step using a neural network to define the presence or absence of eddies in satellite imagery. The original imagery is divided into chips, each of which overlaps the next by half the chip size. For each chip, a magnitude and direction of the maximum image 'energy' are computed from the local power spectrum. These magnitudes and directions are then used as the inputs into the neural network. The neural network has been successfully trained to distinguish 'warm eddy' and 'no-warm eddy' areas in the imagery. Accuracy of the method is shown to be high enough to produce useful results.!13
机译:摘要:海军研究实验室几年来一直致力于开发自动技术,用于分析和解释卫星海洋影像。这些技术结合在一起形成了半自动中尺度分析系统(SAMAS),该系统可以生成墨西哥湾流地区的中尺度图表。 SAMAS的关键要求是能够定义称为涡流的中尺度特征的位置和大小。一种新方法包括使用傅立叶功率谱的数据缩减步骤和使用神经网络的分类步骤,以定义卫星图像中是否存在涡流。原始图像分为多个芯片,每个芯片与下一个芯片重叠一半。对于每个芯片,从局部功率谱计算出最大图像“能量”的大小和方向。然后将这些大小和方向用作神经网络的输入。该神经网络已经成功地训练以区分图像中的“热涡”和“非热涡”区域。结果表明该方法的准确性足以产生有用的结果。13

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