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A Neural Network Based Classification for Sea Ice Types on X-Band SAR Images

机译:基于神经网络的X波段SAR图像海冰类型分类

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摘要

We examine the performance of an automated sea ice classification algorithm based on TerraSAR-X ScanSAR data.\udIn the first step of our process chain, GLCM-based texture\udfeatures are extracted from the image. In the second step,\udthese data are fed into an artificial neural network to classify each pixel. Performance of our implementation is examined by utilizing a time series of ScanSAR images in the Western Barents Sea, acquired in spring 2013. The network is trained on the initial image of the time series and then applied to subsequent images. We obtain a reasonable classification accuracy of at least 70% depending on the choice of our ice type regime, given the incidence angle range of the training data matches that of the classified image. Computational cost of our approach is sufficiently moderate to consider this classification procedure a promising step towards operational, near real time ice charting.
机译:我们检查了基于TerraSAR-X ScanSAR数据的自动海冰分类算法的性能。\ ud在我们的过程链的第一步中,从图像中提取了基于GLCM的纹理\ udfeatures。在第二步中,将这些数据输入到人工神经网络中以对每个像素进行分类。我们利用在2013年春季获取的西巴伦支海的ScanSAR图像的时间序列来检验我们实施的性能。该网络会在该时间序列的初始图像上进行训练,然后应用于后续图像。给定训练数据的入射角范围与分类图像的入射角范围相匹配,根据冰类型的选择,我们可以获得至少70%的合理分类精度。我们的方法的计算成本足够适中,可以认为此分类程序是朝着可操作的,近乎实时的海图制图迈出的有希望的一步。

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