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A Semi-supervised Approach for Ice-water Classification Using Dual-Polarization SAR Satellite Imagery

机译:使用双极化SAR卫星图像的半监督冰水分类方法

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The daily interpretation of SAR sea ice imagery is very important for ship navigation and climate monitoring. Currently, the interpretation is still performed manually by ice analysts due to the complexity of data and the difficulty of creating fine-level ground truth. To overcome these problems, a semi-supervised approach for ice-water classification based on self-training is presented. The proposed algorithm integrates the spatial context model, region merging, and the self-training technique into a single framework. The backscatter intensity, texture, and edge strength features are incorporated in a CRF model using multi-modality Gaussian model as its unary classifier. Region merging is used to build a hierarchical data-adaptive structure to make the inference more efficient. Self-training is concatenated with region merging, so that the spatial location information of the original training samples can be used. Our algorithm has been tested on a large-scale RADARSAT-2 dual-polarization dataset over the Beaufort and Chukchi sea, and the classification results are significantly better than the supervised methods without self-training.
机译:SAR Sea Imageery的日常解释对于船舶导航和气候监测非常重要。目前,由于数据的复杂性和创造细级别实践的困难,冰分析师仍然通过冰分析师手动进行解释。为了克服这些问题,提出了一种基于自我培训的半监督冰水分类方法。该算法将空间上下文模型,区域合并和自训练技术集成到单个框架中。反向散射强度,纹理和边缘强度特征在CRF模型中结合在CRF模型中作为其Unary分类器。区域合并用于构建分层数据自适应结构,以使推理更有效。自我训练与区域合并连接,从而可以使用原始训练样本的空间位置信息。我们的算法已经在Beaufort和Chukchi海上的大型雷达拉特-2双极化数据集上进行了测试,并且分类结果明显优于未经自我训练的监督方法。

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